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CS590D: Data Mining Prof. Chris Clifton February 21, 2006 Clustering Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 2 What is Cluster Analysis? • Finding groups of objects such that the objects in a group will be similar (or related) to one another and different from (or unrelated to) the objects in other groups Inter-cluster distances are maximized Intra-cluster distances are minimized CS590D 3 What is Cluster Analysis? • Cluster: a collection of data objects – Similar to one another within the same cluster – Dissimilar to the objects in other clusters • Cluster analysis – Grouping a set of data objects into clusters • Clustering is unsupervised classification: no predefined classes • Typical applications – As a stand-alone tool to get insight into data distribution – As a preprocessing step for other algorithms CS590D 4 General Applications of Clustering • Pattern Recognition • Spatial Data Analysis – create thematic maps in GIS by clustering feature spaces – detect spatial clusters and explain them in spatial data mining • Image Processing • Economic Science (especially market research) • WWW – Document classification – Cluster Weblog data to discover groups of similar access patterns CS590D 5 Examples of Clustering Applications • Marketing: Help marketers discover distinct groups in their customer bases, and then use this knowledge to develop targeted marketing programs • Land use: Identification of areas of similar land use in an earth observation database • Insurance: Identifying groups of motor insurance policy holders with a high average claim cost • City-planning: Identifying groups of houses according to their house type, value, and geographical location • Earth-quake studies: Observed earth quake epicenters should be clustered along continent faults CS590D 6 Notion of a Cluster can be Ambiguous How many clusters? Six Clusters Two Clusters Four Clusters CS590D 7 What Is Good Clustering? • A good clustering method will produce high quality clusters with – high intra-class similarity – low inter-class similarity • The quality of a clustering result depends on both the similarity measure used by the method and its implementation. • The quality of a clustering method is also measured by its ability to discover some or all of the hidden patterns. CS590D 8 Types of Clusterings • A clustering is a set of clusters • Important distinction between hierarchical and partitional sets of clusters • Partitional Clustering – A division data objects into non-overlapping subsets (clusters) such that each data object is in exactly one subset • Hierarchical clustering – A set of nested clusters organized as a hierarchical tree CS590D 9 Partitional Clustering Original Points A Partitional Clustering CS590D 10 Hierarchical Clustering p1 p3 p4 p2 p1 p2 Traditional Hierarchical Clustering p3 p4 Traditional Dendrogram p1 p3 p4 p2 p1 p2 p3 p4 Non-traditional Hierarchical Clustering Non-traditional Dendrogram CS590D 11 Other Distinctions Between Sets of Clusters • Exclusive versus non-exclusive – In non-exclusive clusterings, points may belong to multiple clusters. – Can represent multiple classes or ‘border’ points • Fuzzy versus non-fuzzy – In fuzzy clustering, a point belongs to every cluster with some weight between 0 and 1 – Weights must sum to 1 – Probabilistic clustering has similar characteristics • Partial versus complete – In some cases, we only want to cluster some of the data • Heterogeneous versus homogeneous – Cluster of widely different sizes, shapes, and densities CS590D 12 Types of Clusters • • • • • • Well-separated clusters Center-based clusters Contiguous clusters Density-based clusters Property or Conceptual Described by an Objective Function CS590D 13 Types of Clusters: WellSeparated • Well-Separated Clusters: – A cluster is a set of points such that any point in a cluster is closer (or more similar) to every other point in the cluster than to any point not in the cluster. 3 well-separated clusters CS590D 14 Types of Clusters: CenterBased • Center-based – A cluster is a set of objects such that an object in a cluster is closer (more similar) to the “center” of a cluster, than to the center of any other cluster – The center of a cluster is often a centroid, the average of all the points in the cluster, or a medoid, the most “representative” point of a cluster 4 center-based clusters CS590D 15 Types of Clusters: ContiguityBased • Contiguous Cluster (Nearest neighbor or Transitive) – A cluster is a set of points such that a point in a cluster is closer (or more similar) to one or more other points in the cluster than to any point not in the cluster. 8 contiguous clusters CS590D 16 Types of Clusters: DensityBased • Density-based – A cluster is a dense region of points, which is separated by lowdensity regions, from other regions of high density. – Used when the clusters are irregular or intertwined, and when noise and outliers are present. 6 density-based clusters CS590D 17 Types of Clusters: Conceptual Clusters • Shared Property or Conceptual Clusters – Finds clusters that share some common property or represent a particular concept. 2 Overlapping Circles CS590D 18 Types of Clusters: Objective Function • Clusters Defined by an Objective Function – Finds clusters that minimize or maximize an objective function. – Enumerate all possible ways of dividing the points into clusters and evaluate the `goodness' of each potential set of clusters by using the given objective function. (NP Hard) – Can have global or local objectives. • Hierarchical clustering algorithms typically have local objectives • Partitional algorithms typically have global objectives – A variation of the global objective function approach is to fit the data to a parameterized model. • Parameters for the model are determined from the data. • Mixture models assume that the data is a ‘mixture' of a number of statistical distributions. CS590D 19 Types of Clusters: Objective Function … • Map the clustering problem to a different domain and solve a related problem in that domain – Proximity matrix defines a weighted graph, where the nodes are the points being clustered, and the weighted edges represent the proximities between points – Clustering is equivalent to breaking the graph into connected components, one for each cluster. – Want to minimize the edge weight between clusters and maximize the edge weight within clusters CS590D 20 Requirements of Clustering in Data Mining • Scalability • Ability to deal with different types of attributes • Discovery of clusters with arbitrary shape • Minimal requirements for domain knowledge to determine input parameters • Able to deal with noise and outliers • Insensitive to order of input records • High dimensionality • Incorporation of user-specified constraints • Interpretability and usability CS590D 21 Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 22 Data Structures • Data matrix x11 ... x i1 ... x n1 – (two modes) • Dissimilarity matrix – (one mode) ... x1f ... ... ... ... xif ... ... ... ... ... xnf ... ... 0 d(2,1) 0 d(3,1) d ( 3,2) 0 : : : d ( n,1) d ( n,2) ... CS590D x1p ... xip ... xnp ... 0 23 Measure the Quality of Clustering • Dissimilarity/Similarity metric: Similarity is expressed in terms of a distance function, which is typically metric: d(i, j) • There is a separate “quality” function that measures the “goodness” of a cluster. • The definitions of distance functions are usually very different for interval-scaled, boolean, categorical, ordinal and ratio variables. • Weights should be associated with different variables based on applications and data semantics. • It is hard to define “similar enough” or “good enough” – the answer is typically highly subjective. CS590D 24 Type of data in clustering analysis • Interval-scaled variables: • Binary variables: • Nominal, ordinal, and ratio variables: • Variables of mixed types: CS590D 25 Interval-valued variables • Standardize data – Calculate the mean absolute deviation: sf 1 n (| x1 f m f | | x2 f m f | ... | xnf m f |) m f 1n (x1 f x2 f ... xnf ) – Calculate the standardized measurement (z-score) where . xif m f zif sf • Using mean absolute deviation is more robust than using standard deviation CS590D 26 Similarity and Dissimilarity Between Objects • Distances are normally used to measure the similarity or dissimilarity between two data objects • Some popular ones include: Minkowski distance: d (i, j) q (| x x |q | x x |q ... | x x |q ) i1 j1 i2 j2 ip jp where i = (xi1, xi2, …, xip) and j = (xj1, xj2, …, xjp) are two pdimensional data objects, and q is a positive integer • If q = 1, d is Manhattan distance d (i, j) | x x | | x x | ... | x x | i1 j1 i2 j 2 i p jp CS590D 27 Similarity and Dissimilarity Between Objects (Cont.) • If q = 2, d is Euclidean distance: d (i, j) (| x x |2 | x x |2 ... | x x |2 ) i1 j1 i2 j2 ip jp – Properties • d(i,j) 0 • d(i,i) = 0 • d(i,j) = d(j,i) • d(i,j) d(i,k) + d(k,j) • Also, one can use weighted distance, parametric Pearson product moment correlation, or other disimilarity measures CS590D 28 Binary Variables • A contingency table for binary data Object j Object i 1 0 1 a b 0 c d sum a c b d sum a b cd p • Simple matching coefficient (invariant, if the binary variable is symmetric): d (i, j) bc a bc d • Jaccard coefficient (noninvariant if the binary variable is asymmetric): d (i, j) bc a bc CS590D 30 Dissimilarity between Binary Variables • Example Name Jack Mary Jim Gender M F M Fever Y Y Y Cough N N P Test-1 P P N Test-2 N N N Test-3 N P N Test-4 N N N – gender is a symmetric attribute – the remaining attributes are asymmetric binary – let the values Y and P be set to 1, and the value N be set to 0 01 0.33 2 01 11 d ( jack , jim ) 0.67 111 1 2 d ( jim , mary ) CS590D 0.75 11 2 d ( jack , mary ) 31 Nominal Variables • A generalization of the binary variable in that it can take more than 2 states, e.g., red, yellow, blue, green • Method 1: Simple matching – m: # of matches, p: total # of variables m d (i, j) p p • Method 2: use a large number of binary variables – creating a new binary variable for each of the M nominal states CS590D 32 Ordinal Variables • An ordinal variable can be discrete or continuous • Order is important, e.g., rank • Can be treated like interval-scaled rif {1,...,M f } – replace xif by their rank – map the range of each variable onto [0, 1] by replacing i-th object in the f-th variable by zif rif 1 M f 1 – compute the dissimilarity using methods for interval-scaled variables CS590D 33 Ratio-Scaled Variables • Ratio-scaled variable: a positive measurement on a nonlinear scale, approximately at exponential scale, such as AeBt or Ae-Bt • Methods: – treat them like interval-scaled variables—not a good choice! (why?—the scale can be distorted) – apply logarithmic transformation yif = log(xif) – treat them as continuous ordinal data treat their rank as intervalscaled CS590D 34 Variables of Mixed Types • A database may contain all the six types of variables – symmetric binary, asymmetric binary, nominal, ordinal, interval and ratio • One may use a weighted formula to combine their effects pf 1 ij( f ) d ij( f ) d (i, j) pf 1 ij( f ) – f is binary or nominal: dij(f) = 0 if xif = xjf , or dij(f) = 1 o.w. – f is interval-based: use the normalized distance – f is ordinal or ratio-scaled • compute ranks rif and rif z • and treat zif as interval-scaled if M CS590D 1 f 1 35 CS590D: Data Mining Prof. Chris Clifton February 23, 2006 Clustering Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 40 Partitioning Algorithms: Basic Concept • Partitioning method: Construct a partition of a database D of n objects into a set of k clusters • Given a k, find a partition of k clusters that optimizes the chosen partitioning criterion – Global optimal: exhaustively enumerate all partitions – Heuristic methods: k-means and k-medoids algorithms – k-means (MacQueen’67): Each cluster is represented by the center of the cluster – k-medoids or PAM (Partition around medoids) (Kaufman & Rousseeuw’87): Each cluster is represented by one of the objects in the cluster CS590D 41 The K-Means Clustering Method • Given k, the k-means algorithm is implemented in four steps: – Partition objects into k nonempty subsets – Compute seed points as the centroids of the clusters of the current partition (the centroid is the center, i.e., mean point, of the cluster) – Assign each object to the cluster with the nearest seed point – Go back to Step 2, stop when no more new assignment CS590D 42 The K-Means Clustering Method 10 10 9 9 8 8 7 7 6 6 5 5 10 9 8 7 6 5 4 4 3 2 1 0 0 1 2 3 4 5 6 7 8 K=2 Arbitrarily choose K object as initial cluster center 9 10 Assign each objects to most similar center 3 2 1 0 0 1 2 3 4 5 6 7 8 9 10 Update the cluster means 4 3 2 1 0 0 1 2 3 4 5 6 reassign 10 9 9 8 8 7 7 6 6 5 5 4 3 2 1 0 1 2 3 4 5 6 7 CS590D 8 8 9 10 reassign 10 0 7 9 10 Update the cluster means 4 3 2 1 0 0 1 2 3 4 5 6 7 8 9 43 10 Comments on the K-Means Method • Strength: Relatively efficient: O(tkn), where n is # objects, k is # clusters, and t is # iterations. Normally, k, t << n. • Comparing: PAM: O(k(n-k)2 ), CLARA: O(ks2 + k(n-k)) • Comment: Often terminates at a local optimum. The global optimum may be found using techniques such as: deterministic annealing and genetic algorithms • Weakness – Applicable only when mean is defined, then what about categorical data? – Need to specify k, the number of clusters, in advance – Unable to handle noisy data and outliers – Not suitable to discover clusters with non-convex shapes CS590D 44 Variations of the K-Means Method • A few variants of the k-means which differ in – Selection of the initial k means – Dissimilarity calculations – Strategies to calculate cluster means • Handling categorical data: k-modes (Huang’98) – Replacing means of clusters with modes – Using new dissimilarity measures to deal with categorical objects – Using a frequency-based method to update modes of clusters – A mixture of categorical and numerical data: k-prototype method CS590D 45 What is the problem of kMeans Method? • The k-means algorithm is sensitive to outliers ! – Since an object with an extremely large value may substantially distort the distribution of the data. • K-Medoids: Instead of taking the mean value of the object in a cluster as a reference point, medoids can be used, which is the most centrally located object in a cluster. 10 10 9 9 8 8 7 7 6 6 5 5 4 4 3 3 2 2 1 1 0 0 0 1 2 3 4 5 6 7 8 9 10 CS590D 0 1 2 3 4 5 6 7 8 9 10 46 Importance of Choosing Initial Centroids Iteration 1 Iteration 2 Iteration 3 2.5 2.5 2.5 2 2 2 1.5 1.5 1.5 y 3 y 3 y 3 1 1 1 0.5 0.5 0.5 0 0 0 -2 -1.5 -1 -0.5 0 0.5 1 1.5 2 -2 -1.5 -1 -0.5 x 0 0.5 1 1.5 2 -2 Iteration 4 Iteration 5 2.5 2 2 2 1.5 1.5 1.5 1 1 1 0.5 0.5 0.5 0 0 0 -0.5 0 x 0.5 1 1.5 2 0 0.5 1 1.5 2 1 1.5 2 y 2.5 y 2.5 y 3 -1 -0.5 Iteration 6 3 -1.5 -1 x 3 -2 -1.5 x -2 -1.5 -1 -0.5 0 0.5 1 CS590D x 1.5 2 -2 -1.5 -1 -0.5 0 x 0.5 47 Solutions to Initial Centroids Problem • Multiple runs – Helps, but probability is not on your side • Sample and use hierarchical clustering to determine initial centroids • Select more than k initial centroids and then select among these initial centroids – Select most widely separated • Postprocessing • Bisecting K-means – Not as susceptible to initialization issues CS590D 48 Limitations of K-means: Differing Density K-means (3 Clusters) Original Points CS590D 49 Limitations of K-means: Nonglobular Shapes Original Points K-means (2 Clusters) CS590D 50 The K-Medoids Clustering Method • Find representative objects, called medoids, in clusters • PAM (Partitioning Around Medoids, 1987) – starts from an initial set of medoids and iteratively replaces one of the medoids by one of the non-medoids if it improves the total distance of the resulting clustering – PAM works effectively for small data sets, but does not scale well for large data sets • CLARA (Kaufmann & Rousseeuw, 1990) • CLARANS (Ng & Han, 1994): Randomized sampling • Focusing + spatial data structure (Ester et al., 1995) CS590D 51 Typical k-medoids algorithm (PAM) Total Cost = 20 10 10 10 9 9 9 8 8 8 Arbitrary choose k object as initial medoids 7 6 5 4 3 2 7 6 5 4 3 2 1 1 0 0 0 1 2 3 4 5 6 7 8 9 0 10 K=2 Do loop Until no change 1 2 3 4 5 6 7 8 9 10 Assign each remainin g object to nearest medoids 7 6 5 4 3 2 1 0 0 1 2 3 4 5 6 7 8 9 10 Randomly select a nonmedoid object,Oramdom Total Cost = 26 10 10 Compute total cost of swapping 9 9 Swapping O and Oramdom 8 If quality is improved. 5 5 4 4 3 3 2 2 1 1 7 6 0 0 1 2 CS590D 3 4 5 6 8 7 6 0 7 8 9 10 0 1 2 3 4 5 6 7 52 8 9 10 PAM (Partitioning Around Medoids) (1987) • PAM (Kaufman and Rousseeuw, 1987), built in Splus • Use real object to represent the cluster – Select k representative objects arbitrarily – For each pair of non-selected object h and selected object i, calculate the total swapping cost TCih – For each pair of i and h, • If TCih < 0, i is replaced by h • Then assign each non-selected object to the most similar representative object – repeat steps 2-3 until there is no change CS590D 53 PAM Clustering: Total swapping cost TCih=jCjih 10 10 9 9 8 7 7 6 j t 8 t 6 j 5 5 4 4 i 3 h h i 3 2 2 1 1 0 0 0 1 2 3 4 5 6 7 8 9 10 Cjih = d(j, h) - d(j, i) 0 1 2 3 4 5 6 7 8 9 10 Cjih = 0 10 10 9 9 8 8 h 7 7 j 6 6 i 5 5 i 4 4 t 3 h 3 2 2 t 1 1 j 0 0 0 1 2 3 4 5 6 7 8 9 Cjih = d(j, t) - d(j, i) 10 0 1 2 3 4 5 6 7 8 9 Cjih = d(j, h) - d(j, t) 10 What is the problem with PAM? • Pam is more robust than k-means in the presence of noise and outliers because a medoid is less influenced by outliers or other extreme values than a mean • Pam works efficiently for small data sets but does not scale well for large data sets. – O(k(n-k)2 ) for each iteration where n is # of data,k is # of clusters Sampling based method, CLARA(Clustering LARge Applications) CS590D 55 CLARA (Clustering Large Applications) (1990) • CLARA (Kaufmann and Rousseeuw in 1990) – Built in statistical analysis packages, such as S+ • It draws multiple samples of the data set, applies PAM on each sample, and gives the best clustering as the output • Strength: deals with larger data sets than PAM • Weakness: – Efficiency depends on the sample size – A good clustering based on samples will not necessarily represent a good clustering of the whole data set if the sample is biased CS590D 56 CLARANS (“Randomized” CLARA) (1994) • CLARANS (A Clustering Algorithm based on Randomized Search) (Ng and Han’94) • CLARANS draws sample of neighbors dynamically • The clustering process can be presented as searching a graph where every node is a potential solution, that is, a set of k medoids • If the local optimum is found, CLARANS starts with new randomly selected node in search for a new local optimum • It is more efficient and scalable than both PAM and CLARA • Focusing techniques and spatial access structures may further improve its performance (Ester et al.’95) CS590D 57 Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 58 Hierarchical Clustering • Use distance matrix as clustering criteria. This method does not require the number of clusters k as an input, but needs a termination condition Step 0 a Step 1 Step 2 Step 3 Step 4 ab b abcde c cde d de e Step 4 agglomerative (AGNES) Step 3 Step 2 StepCS590D 1 Step 0 divisive (DIANA) 59 AGNES (Agglomerative Nesting) • Introduced in Kaufmann and Rousseeuw (1990) • Implemented in statistical analysis packages, e.g., Splus • Use the Single-Link method and the dissimilarity matrix. • Merge nodes that have the least dissimilarity • Go on in a non-descending fashion • Eventually all nodes belong to the same cluster 10 10 10 9 9 9 8 8 8 7 7 7 6 6 6 5 5 5 4 4 4 3 3 3 2 2 2 1 1 1 0 0 0 1 2 3 4 5 6 7 8 9 10 0 0 1 2 3 4 5 6 CS590D 7 8 9 10 0 1 2 3 4 5 6 7 8 9 10 60 Agglomerative Clustering Algorithm • More popular hierarchical clustering technique • Basic algorithm is straightforward 1. 2. 3. 4. 5. 6. • Compute the proximity matrix Let each data point be a cluster Repeat Merge the two closest clusters Update the proximity matrix Until only a single cluster remains Key operation is the computation of the proximity of two clusters – Different approaches to defining the distance between clusters distinguish the different algorithms CS590D 61 Starting Situation • Start with clusters of individual points and p1 p2 p3 p4 p5 ... a proximity matrix p1 p2 p3 p4 p5 . . Proximity Matrix . ... p1 CS590D p2 p3 p4 p9 p10 p11 p12 62 Intermediate Situation • After some merging steps, we have some clusters C1 C2 C3 C4 C5 C1 C2 C3 C3 C4 C4 C5 C1 Proximity Matrix C2 C5 ... p1 CS590D p2 p3 p4 p9 p10 p11 p12 63 Intermediate Situation • We want to merge the two closest clusters (C2 and C5) and update the proximity matrix. C1 C2 C3 C4 C5 C1 C2 C3 C3 C4 C4 C5 C1 Proximity Matrix C2 C5 ... p1 CS590D p2 p3 p4 p9 p10 p11 p12 64 After Merging • The question is “How do we update the proximity C2 matrix?” U C1 C1 C3 C3 C4 ? ? ? ? C2 U C5 C4 C5 ? C3 ? C4 ? Proximity Matrix C1 C2 U C5 ... p1 CS590D p2 p3 p4 p9 p10 p11 p12 65 How to Define Inter-Cluster Similarity p1 Similarity? p2 p3 p4 p5 ... p1 p2 • • • • • p3 MIN MAX Group Average Distance Between Centroids Other methods driven by an objective function p4 p5 . . . – Ward’s Method uses squared error CS590D Proximity Matrix 66 How to Define Inter-Cluster Similarity p1 p2 p3 p4 p5 ... p1 p2 • • • • • p3 MIN MAX Group Average Distance Between Centroids Other methods driven by an objective function p4 p5 . . . – Ward’s Method uses squared error CS590D Proximity Matrix 67 How to Define Inter-Cluster Similarity p1 p2 p3 p4 p5 ... p1 p2 • • • • • p3 MIN MAX Group Average Distance Between Centroids Other methods driven by an objective function p4 p5 . . . – Ward’s Method uses squared error CS590D Proximity Matrix 68 How to Define Inter-Cluster Similarity p1 p2 p3 p4 p5 ... p1 p2 • • • • • p3 MIN MAX Group Average Distance Between Centroids Other methods driven by an objective function p4 p5 . . . – Ward’s Method uses squared error CS590D Proximity Matrix 69 How to Define Inter-Cluster Similarity p1 p2 p3 p4 p5 ... p1 p2 • • • • • p3 MIN MAX Group Average Distance Between Centroids Other methods driven by an objective function p4 p5 . . . – Ward’s Method uses squared error CS590D Proximity Matrix 70 Hierarchical Clustering: Time and Space requirements • O(N2) space since it uses the proximity matrix. – N is the number of points. • O(N3) time in many cases – There are N steps and at each step the size, N2, proximity matrix must be updated and searched – Complexity can be reduced to O(N2 log(N) ) time for some approaches CS590D 84 Hierarchical Clustering: Problems and Limitations • Once a decision is made to combine two clusters, it cannot be undone • No objective function is directly minimized • Different schemes have problems with one or more of the following: – Sensitivity to noise and outliers – Difficulty handling different sized clusters and convex shapes – Breaking large clusters CS590D 85 A Dendrogram Shows How the Clusters are Merged Hierarchically • Decompose data objects into a several levels of nested partitioning (tree of clusters), called a dendrogram. • A clustering of the data objects is obtained by cutting the dendrogram at the desired level, then each connected component forms a cluster. CS590D 86 DIANA (Divisive Analysis) • Introduced in Kaufmann and Rousseeuw (1990) • Implemented in statistical analysis packages, e.g., Splus • Inverse order of AGNES • Eventually each node forms a cluster on its own 10 10 10 9 9 9 8 8 8 7 7 7 6 6 6 5 5 5 4 4 4 3 3 3 2 2 2 1 1 1 0 0 0 0 1 2 3 4 5 6 7 8 9 10 0 1 2 3 4 5 6 7 CS590D 8 9 10 0 1 2 3 4 5 6 7 8 9 10 87 More on Hierarchical Clustering Methods • Major weakness of agglomerative clustering methods – do not scale well: time complexity of at least O(n2), where n is the number of total objects – can never undo what was done previously • Integration of hierarchical with distance-based clustering – BIRCH (1996): uses CF-tree and incrementally adjusts the quality of sub-clusters – CURE (1998): selects well-scattered points from the cluster and then shrinks them towards the center of the cluster by a specified fraction – CHAMELEON (1999): hierarchical clustering using dynamic modeling CS590D 90 BIRCH (1996) • Birch: Balanced Iterative Reducing and Clustering using Hierarchies, by Zhang, Ramakrishnan, Livny (SIGMOD’96) • Incrementally construct a CF (Clustering Feature) tree, a hierarchical data structure for multiphase clustering – Phase 1: scan DB to build an initial in-memory CF tree (a multi-level compression of the data that tries to preserve the inherent clustering structure of the data) – Phase 2: use an arbitrary clustering algorithm to cluster the leaf nodes of the CF-tree • Scales linearly: finds a good clustering with a single scan and improves the quality with a few additional scans • Weakness: handles only numeric data, and sensitive to the order of the data record. CS590D 91 Clustering Feature Vector Clustering Feature: CF = (N, LS, SS) N: Number of data points LS: Ni=1=Xi SS: Ni=1=Xi2 CF = (5, (16,30),(54,190)) 10 9 8 7 6 5 4 3 2 1 0 0 1 2 3 4 5 6 7 CS590D 8 9 10 (3,4) (2,6) (4,5) (4,7) (3,8) 92 CF-Tree in BIRCH • Clustering feature: – summary of the statistics for a given subcluster: the 0-th, 1st and 2nd moments of the subcluster from the statistical point of view. – registers crucial measurements for computing cluster and utilizes storage efficiently A CF tree is a height-balanced tree that stores the clustering features for a hierarchical clustering – A nonleaf node in a tree has descendants or “children” – The nonleaf nodes store sums of the CFs of their children • A CF tree has two parameters – Branching factor: specify the maximum number of children. – threshold: max diameter of sub-clusters stored at the leaf nodes CS590D 93 CF Tree Root B=7 CF1 CF2 CF3 CF6 L=6 child1 child2 child3 child6 Non-leaf node CF1 CF2 CF3 CF5 child1 child2 child3 child5 Leaf node prev CF1 CF2 CF6 next Leaf node prev CF1 CF2 CF4 next CURE (Clustering Using REpresentatives ) • CURE: proposed by Guha, Rastogi & Shim, 1998 – Stops the creation of a cluster hierarchy if a level consists of k clusters – Uses multiple representative points to evaluate the distance between clusters, adjusts well to arbitrary shaped clusters and avoids single-link effect CS590D 95 Drawbacks of DistanceBased Method • Drawbacks of square-error based clustering method – Consider only one point as representative of a cluster – Good only for convex shaped, similar size and density, and if k can be reasonably estimated CS590D 96 Cure: The Algorithm • • • • Draw random sample s. Partition sample to p partitions with size s/p Partially cluster partitions into s/pq clusters Eliminate outliers – By random sampling – If a cluster grows too slow, eliminate it. • Cluster partial clusters. • Label data in disk CS590D 97 Data Partitioning and Clustering – s = 50 – p=2 – s/p = 25 s/pq = 5 y y y x y y x x CS590D x x 98 Cure: Shrinking Representative Points y y x • Shrink the multiple representative points towards the gravity center by a fraction of . x • Multiple representatives capture the shape of the cluster CS590D 99 Clustering Categorical Data: ROCK • ROCK: Robust Clustering using linKs, by S. Guha, R. Rastogi, K. Shim (ICDE’99). – Use links to measure similarity/proximity – Not distance based – Computational complexity: O(n2 nm 2 m n log n) m a • Basic ideas: T T2 – Similarity function and neighbors: Sim(T1 , T2 ) 1 T1 T2 Let T1 = {1,2,3}, T2={3,4,5} Sim( T1, T 2) {3} 1 0.2 {1,2,3,4,5} 5 CS590D 100 CHAMELEON (Hierarchical clustering using dynamic modeling) • CHAMELEON: by G. Karypis, E.H. Han, and V. Kumar’99 • Measures the similarity based on a dynamic model • – Two clusters are merged only if the interconnectivity and closeness (proximity) between two clusters are high relative to the internal interconnectivity of the clusters and closeness of items within the clusters – Cure ignores information about interconnectivity of the objects, Rock ignores information about the closeness of two clusters A two-phase algorithm 1. Use a graph partitioning algorithm: cluster objects into a large number of relatively small sub-clusters 2. Use an agglomerative hierarchical clustering algorithm: find the genuine clusters by repeatedly combining these sub-clusters CS590D 102 Overall Framework of CHAMELEON Construct Partition the Graph Sparse Graph Data Set Merge Partition Final Clusters CS590D 103 Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 105 Density-Based Clustering Methods • Clustering based on density (local cluster criterion), such as density-connected points • Major features: – – – – Discover clusters of arbitrary shape Handle noise One scan Need density parameters as termination condition • Several interesting studies: – – – – DBSCAN: Ester, et al. (KDD’96) OPTICS: Ankerst, et al (SIGMOD’99). DENCLUE: Hinneburg & D. Keim (KDD’98) CLIQUE: Agrawal, et al. (SIGMOD’98) CS590D 106 Density Concepts • Core object (CO)–object with at least ‘M’ objects within a radius ‘E-neighborhood’ • Directly density reachable (DDR)–x is CO, y is in x’s ‘E- neighborhood’ • Density reachable–there exists a chain of DDR objects from x to y • Density based cluster–density connected objects maximum w.r.t. reachability CS590D 107 Density-Based Clustering: Background • Two parameters: – Eps: Maximum radius of the neighbourhood – MinPts: Minimum number of points in an Eps-neighbourhood of that point • NEps(p): {q belongs to D | dist(p,q) <= Eps} • Directly density-reachable: A point p is directly densityreachable from a point q wrt. Eps, MinPts if – 1) p belongs to NEps(q) – 2) core point condition: |NEps (q)| >= MinPts CS590D p q MinPts = 5 Eps = 1 cm 108 Density-Based Clustering: Background (II) • Density-reachable: – A point p is density-reachable from a point q wrt. Eps, MinPts if there is a chain of points p1, …, pn, p1 = q, pn = p such that pi+1 is directly densityreachable from pi p p1 q • Density-connected – A point p is density-connected to a point q wrt. Eps, MinPts if there is a point o such that both, p and q are density-reachable from o wrt. Eps and MinPts. CS590D p q o 109 DBSCAN: Density Based Spatial Clustering of Applications with Noise • Relies on a density-based notion of cluster: A cluster is defined as a maximal set of density-connected points • Discovers clusters of arbitrary shape in spatial databases with noise Outlier Border Eps = 1cm Core MinPts = 5 CS590D 110 DBSCAN • DBSCAN is a density-based algorithm. – Density = number of points within a specified radius (Eps) – A point is a core point if it has more than a specified number of points (MinPts) within Eps • These are points that are at the interior of a cluster – A border point has fewer than MinPts within Eps, but is in the neighborhood of a core point – A noise point is any point that is not a core point or a border point. CS590D 112 DBSCAN: Core, Border, and Noise Points CS590D 113 DBSCAN Algorithm • Eliminate noise points • Perform clustering on the remaining points CS590D 114 DBSCAN: Core, Border and Noise Points Original Points Point types: core, border and noise Eps = 10, MinPts = 4 CS590D 115 When DBSCAN Works Well Original Points Clusters • Resistant to Noise • Can handle clusters of different shapes and sizes CS590D 116 When DBSCAN Does NOT Work Well (MinPts=4, Eps=9.75). Original Points • Varying densities • High-dimensional data (MinPts=4, Eps=9.92) CS590D 117 DBSCAN: Determining EPS and MinPts • • • Idea is that for points in a cluster, their kth nearest neighbors are at roughly the same distance Noise points have the kth nearest neighbor at farther distance So, plot sorted distance of every point to its kth nearest neighbor CS590D 118 OPTICS: A Cluster-Ordering Method (1999) • OPTICS: Ordering Points To Identify the Clustering Structure – Ankerst, Breunig, Kriegel, and Sander (SIGMOD’99) – Produces a special order of the database wrt its density-based clustering structure – This cluster-ordering contains info equiv to the density-based clusterings corresponding to a broad range of parameter settings – Good for both automatic and interactive cluster analysis, including finding intrinsic clustering structure – Can be represented graphically or using visualization techniques CS590D 119 Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 129 Cluster Validity • For supervised classification we have a variety of measures to evaluate how good our model is – Accuracy, precision, recall • For cluster analysis, the analogous question is how to evaluate the “goodness” of the resulting clusters? • But “clusters are in the eye of the beholder”! • Then why do we want to evaluate them? – – – – To avoid finding patterns in noise To compare clustering algorithms To compare two sets of clusters To compare two clusters CS590D 130 1 1 0.9 0.9 0.8 0.8 0.7 0.7 0.6 0.6 0.5 0.5 y Random Points y Clusters found in Random Data 0.4 0.4 0.3 0.3 0.2 0.2 0.1 0.1 0 0 0.2 0.4 0.6 0.8 0 1 DBSCAN 0 0.2 0.4 x 1 1 0.9 0.9 0.8 0.8 0.7 0.7 0.6 0.6 0.5 0.5 y y K-means 0.4 0.4 0.3 0.3 0.2 0.2 0.1 0.1 0 0 0.2 0.4 0.6 x 0.6 0.8 1 x 0.8 1 0 CS590D0 Complete Link 0.2 0.4 0.6 x 0.8 1 131 Different Aspects of Cluster Validation 1. 2. 3. Determining the clustering tendency of a set of data, i.e., distinguishing whether non-random structure actually exists in the data. Comparing the results of a cluster analysis to externally known results, e.g., to externally given class labels. Evaluating how well the results of a cluster analysis fit the data without reference to external information. - Use only the data 4. 5. Comparing the results of two different sets of cluster analyses to determine which is better. Determining the ‘correct’ number of clusters. For 2, 3, and 4, we can further distinguish whether we want to evaluate the entire clustering or just individual clusters. CS590D 132 Measures of Cluster Validity • Numerical measures that are applied to judge various aspects of cluster validity, are classified into the following three types. – External Index: Used to measure the extent to which cluster labels match externally supplied class labels. • Entropy – Internal Index: Used to measure the goodness of a clustering structure without respect to external information. • Sum of Squared Error (SSE) – Relative Index: Used to compare two different clusterings or clusters. • Often an external or internal index is used for this function, e.g., SSE or entropy • Sometimes these are referred to as criteria instead of indices – However, sometimes criterion is the general strategy and index is the numerical measure that implements the criterion. CS590D 133 Measuring Cluster Validity Via Correlation • Two matrices – – Proximity Matrix “Incidence” Matrix • • • • Compute the correlation between the two matrices – • • One row and one column for each data point An entry is 1 if the associated pair of points belong to the same cluster An entry is 0 if the associated pair of points belongs to different clusters Since the matrices are symmetric, only the correlation between n(n-1) / 2 entries needs to be calculated. High correlation indicates that points that belong to the same cluster are close to each other. Not a good measure for some density or contiguity based clusters. CS590D 134 Measuring Cluster Validity Via Correlation 1 1 0.9 0.9 0.8 0.8 0.7 0.7 0.6 0.6 0.5 0.5 y y • Correlation of incidence and proximity matrices for the K-means clusterings of the following two data sets. 0.4 0.4 0.3 0.3 0.2 0.2 0.1 0.1 0 0 0.2 0.4 0.6 0.8 0 1 x 0 0.2 0.4 0.6 0.8 1 x Corr = -0.9235 Corr = -0.5810 CS590D 135 Using Similarity Matrix for Cluster Validation • Order the similarity matrix with respect to cluster labels and inspect visually. 1 1 0.9 0.8 0.7 Points y 0.6 0.5 0.4 0.3 0.2 0.1 0 10 0.9 20 0.8 30 0.7 40 0.6 50 0.5 60 0.4 70 0.3 80 0.2 90 0.1 100 0 0.2 0.4 0.6 0.8 20 1 40 60 80 0 100 Similarity Points x CS590D 136 Using Similarity Matrix for Cluster Validation • Clusters in random data are not so crisp 1 10 0.9 0.9 20 0.8 0.8 30 0.7 0.7 40 0.6 0.6 50 0.5 0.5 60 0.4 0.4 70 0.3 0.3 80 0.2 0.2 90 0.1 0.1 100 20 40 60 80 y Points 1 0 0 100 Similarity Points 0 0.2 0.4 0.6 0.8 1 x DBSCAN CS590D 137 Using Similarity Matrix for Cluster Validation • Clusters in random data are not so crisp 1 10 0.9 0.9 20 0.8 0.8 30 0.7 0.7 40 0.6 0.6 50 0.5 0.5 60 0.4 0.4 70 0.3 0.3 80 0.2 0.2 90 0.1 0.1 100 20 40 60 80 y Points 1 0 0 100 Similarity 0 0.2 0.4 0.6 0.8 1 x Points K-means CS590D 138 Using Similarity Matrix for Cluster Validation 1 0.9 500 1 2 0.8 6 0.7 1000 3 0.6 4 1500 0.5 0.4 2000 0.3 5 0.2 2500 0.1 7 3000 500 1000 1500 2000 2500 3000 0 DBSCAN CS590D 140 Internal Measures: SSE • Clusters in more complicated figures aren’t well separated • Internal Index: Used to measure the goodness of a clustering structure without respect to external information – SSE • SSE is good for comparing two clusterings or two clusters (average SSE). • Can also be used to estimate the number of clusters 10 9 6 8 4 7 6 SSE 2 0 5 4 -2 3 2 -4 1 -6 0 5 10 15 CS590D 2 5 10 15 K 20 25 30 141 Internal Measures: SSE • SSE curve for a more complicated data set 1 2 6 3 4 5 7 SSE of clusters found using K-means CS590D 142 Framework for Cluster Validity • Need a framework to interpret any measure. – • For example, if our measure of evaluation has the value, 10, is that good, fair, or poor? Statistics provide a framework for cluster validity – The more “atypical” a clustering result is, the more likely it represents valid structure in the data Can compare the values of an index that result from random data or clusterings to those of a clustering result. – • – • If the value of the index is unlikely, then the cluster results are valid These approaches are more complicated and harder to understand. For comparing the results of two different sets of cluster analyses, a framework is less necessary. – However, there is the question of whether the difference between two index values is significant CS590D 143 Statistical Framework for SSE • Example – Compare SSE of 0.005 against three clusters in random data – Histogram shows SSE of three clusters in 500 sets of random data points of size 100 distributed over the range 0.2 – 0.8 for x 50 and y values 1 0.9 45 0.8 40 0.7 35 30 Count y 0.6 0.5 0.4 20 0.3 15 0.2 10 0.1 0 25 5 0 0.2 0.4 0.6 x 0.8 1 0 0.016 0.018 0.02 0.022 0.024 0.026 0.028 0.03 0.032 0.034 SSE CS590D 144 Statistical Framework for Correlation 1 1 0.9 0.9 0.8 0.8 0.7 0.7 0.6 0.6 0.5 0.5 y y • Correlation of incidence and proximity matrices for the K-means clusterings of the following two data sets. 0.4 0.4 0.3 0.3 0.2 0.2 0.1 0.1 0 0 0.2 0.4 0.6 x Corr = -0.9235 0.8 1 0 0 0.2 0.4 0.6 0.8 1 x Corr = -0.5810 CS590D 145 Internal Measures: Cohesion and Separation • Cluster Cohesion: Measures how closely related are objects in a cluster – Example: SSE • Cluster Separation: Measure how distinct or well-separated a cluster is from other clusters • Example: Squared Error – Cohesion is measured by the within cluster sum of squares (SSE) WSS ( x mi )2 i xC i – Separation is measured by the between cluster sum of squares BSS Ci (m mi )2 i – Where |Ci| is the size of cluster i CS590D 146 Internal Measures: Cohesion and Separation • Example: SSE – BSS + WSS = constant m 1 m1 K=1 cluster: 2 3 4 m2 5 WSS (1 3)2 (2 3)2 (4 3)2 (5 3)2 10 BSS 4 (3 3)2 0 Total 10 0 10 K=2 clusters: WSS (1 1.5) 2 ( 2 1.5) 2 ( 4 4.5) 2 (5 4.5) 2 1 BSS 2 (3 1.5) 2 2 ( 4.5 3) 2 9 Total 1 9 10 CS590D 147 Internal Measures: Cohesion and Separation • A proximity graph based approach can also be used for cohesion and separation. – Cluster cohesion is the sum of the weight of all links within a cluster. – Cluster separation is the sum of the weights between nodes in the cluster and nodes outside the cluster. cohesion separation CS590D 148 Internal Measures: Silhouette Coefficient • Silhouette Coefficient combine ideas of both cohesion and separation, but for individual points, as well as clusters and clusterings • For an individual point, i – Calculate a = average distance of i to the points in its cluster – Calculate b = min (average distance of i to points in another cluster) – The silhouette coefficient for a point is then given by s = 1 – a/b if a < b, (or s = b/a - 1 if a b, not the usual case) b – Typically between 0 and 1. – The closer to 1 the better. a • Can calculate the Average Silhouette width for a cluster or a clustering CS590D 149 External Measures of Cluster Validity: Entropy and Purity CS590D 150 Final Comment on Cluster Validity “The validation of clustering structures is the most difficult and frustrating part of cluster analysis. Without a strong effort in this direction, cluster analysis will remain a black art accessible only to those true believers who have experience and great courage.” Algorithms for Clustering Data, Jain and Dubes CS590D 151 CS590D: Data Mining Prof. Chris Clifton March 2, 2006 Clustering Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 153 Grid-Based Clustering Method • Using multi-resolution grid data structure • Several interesting methods – STING (a STatistical INformation Grid approach) by Wang, Yang and Muntz (1997) – WaveCluster by Sheikholeslami, Chatterjee, and Zhang (VLDB’98) • A multi-resolution clustering approach using wavelet method – CLIQUE: Agrawal, et al. (SIGMOD’98) CS590D 154 STING: A Statistical Information Grid Approach • Wang, Yang and Muntz (VLDB’97) • The spatial area area is divided into rectangular cells • There are several levels of cells corresponding to different levels of resolution CS590D 155 STING: A Statistical Information Grid Approach (2) – Each cell at a high level is partitioned into a number of smaller cells in the next lower level – Statistical info of each cell is calculated and stored beforehand and is used to answer queries – Parameters of higher level cells can be easily calculated from parameters of lower level cell • count, mean, s, min, max • type of distribution—normal, uniform, etc. – Use a top-down approach to answer spatial data queries – Start from a pre-selected layer—typically with a small number of cells – For each cell in the current level compute the confidence interval CS590D 156 STING: A Statistical Information Grid Approach (3) – Remove the irrelevant cells from further consideration – When finish examining the current layer, proceed to the next lower level – Repeat this process until the bottom layer is reached – Advantages: • Query-independent, easy to parallelize, incremental update • O(K), where K is the number of grid cells at the lowest level – Disadvantages: • All the cluster boundaries are either horizontal or vertical, and no diagonal boundary is detected CS590D 157 WaveCluster (1998) • Sheikholeslami, Chatterjee, and Zhang (VLDB’98) • A multi-resolution clustering approach which applies wavelet transform to the feature space – A wavelet transform is a signal processing technique that decomposes a signal into different frequency sub-band. • Both grid-based and density-based • Input parameters: – # of grid cells for each dimension – the wavelet, and the # of applications of wavelet transform. CS590D 158 What is Wavelet (1)? CS590D 159 WaveCluster (1998) • How to apply wavelet transform to find clusters – Summaries the data by imposing a multidimensional grid structure onto data space – These multidimensional spatial data objects are represented in a n-dimensional feature space – Apply wavelet transform on feature space to find the dense regions in the feature space – Apply wavelet transform multiple times which result in clusters at different scales from fine to coarse CS590D 160 Wavelet Transform • Decomposes a signal into different frequency subbands. (can be applied to ndimensional signals) • Data are transformed to preserve relative distance between objects at different levels of resolution. • Allows natural clusters to become more distinguishable CS590D 161 What Is Wavelet (2)? CS590D 162 Quantization CS590D 163 Transformation CS590D 164 WaveCluster (1998) • Why is wavelet transformation useful for clustering – Unsupervised clustering It uses hat-shape filters to emphasize region where points cluster, but simultaneously to suppress weaker information in their boundary – Effective removal of outliers – Multi-resolution – Cost efficiency • Major features: – – – – Complexity O(N) Detect arbitrary shaped clusters at different scales Not sensitive to noise, not sensitive to input order Only applicable to low dimensional data CS590D 165 CLIQUE (Clustering In QUEst) • Agrawal, Gehrke, Gunopulos, Raghavan (SIGMOD’98). • Automatically identifying subspaces of a high dimensional data space that allow better clustering than original space • CLIQUE can be considered as both density-based and grid-based – It partitions each dimension into the same number of equal length interval – It partitions an m-dimensional data space into non-overlapping rectangular units – A unit is dense if the fraction of total data points contained in the unit exceeds the input model parameter – A cluster is a maximal set of connected dense units within a subspace CS590D 166 CLIQUE: The Major Steps • Partition the data space and find the number of points that lie inside each cell of the partition. • Identify the subspaces that contain clusters using the Apriori principle • Identify clusters: – Determine dense units in all subspaces of interests – Determine connected dense units in all subspaces of interests. • Generate minimal description for the clusters – Determine maximal regions that cover a cluster of connected dense units for each cluster – Determination of minimal cover for each cluster CS590D 167 =3 30 40 Vacation 20 50 Salary 30 (week) 0 1 2 3 4 5 6 7 Vacation (10,000) 0 1 2 3 4 5 6 7 age 60 20 30 40 50 age 50 age 60 Strength and Weakness of CLIQUE • Strength – It automatically finds subspaces of the highest dimensionality such that high density clusters exist in those subspaces – It is insensitive to the order of records in input and does not presume some canonical data distribution – It scales linearly with the size of input and has good scalability as the number of dimensions in the data increases • Weakness – The accuracy of the clustering result may be degraded at the expense of simplicity of the method CS590D 169 Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 170 Model-Based Clustering Methods • Attempt to optimize the fit between the data and some mathematical model • Statistical and AI approach – Conceptual clustering • A form of clustering in machine learning • Produces a classification scheme for a set of unlabeled objects • Finds characteristic description for each concept (class) – COBWEB (Fisher’87) • A popular a simple method of incremental conceptual learning • Creates a hierarchical clustering in the form of a classification tree • Each node refers to a concept and contains a probabilistic description of that concept CS590D 171 COBWEB Clustering Method A classification tree CS590D 172 More on Statistical-Based Clustering • Limitations of COBWEB – The assumption that the attributes are independent of each other is often too strong because correlation may exist – Not suitable for clustering large database data – skewed tree and expensive probability distributions • CLASSIT – an extension of COBWEB for incremental clustering of continuous data – suffers similar problems as COBWEB • AutoClass (Cheeseman and Stutz, 1996) – Uses Bayesian statistical analysis to estimate the number of clusters – Popular in industry CS590D 173 Other Model-Based Clustering Methods • Neural network approaches – Represent each cluster as an exemplar, acting as a “prototype” of the cluster – New objects are distributed to the cluster whose exemplar is the most similar according to some dostance measure • Competitive learning – Involves a hierarchical architecture of several units (neurons) – Neurons compete in a “winner-takes-all” fashion for the object currently being presented CS590D 174 Model-Based Clustering Methods CS590D 175 Self-organizing feature maps (SOMs) • Clustering is also performed by having several units competing for the current object • The unit whose weight vector is closest to the current object wins • The winner and its neighbors learn by having their weights adjusted • SOMs are believed to resemble processing that can occur in the brain • Useful for visualizing high-dimensional data in 2or 3-D space CS590D 176 Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 177 What Is Outlier Discovery? • What are outliers? – The set of objects are considerably dissimilar from the remainder of the data – Example: Sports: Michael Jordon, Wayne Gretzky, ... • Problem – Find top n outlier points • Applications: – – – – Credit card fraud detection Telecom fraud detection Customer segmentation Medical analysis CS590D 178 Outlier Discovery: Statistical Approaches Assume a model underlying distribution that generates data set (e.g. normal distribution) • Use discordancy tests depending on – data distribution – distribution parameter (e.g., mean, variance) – number of expected outliers • Drawbacks – most tests are for single attribute – In many cases, data distribution may not be known CS590D: Data Mining Prof. Chris Clifton March 4, 2006 Clustering Outlier Discovery: DistanceBased Approach • Introduced to counter the main limitations imposed by statistical methods – We need multi-dimensional analysis without knowing data distribution. • Distance-based outlier: A DB(p, D)-outlier is an object O in a dataset T such that at least a fraction p of the objects in T lies at a distance greater than D from O • Algorithms for mining distance-based outliers – Index-based algorithm – Nested-loop algorithm – Cell-based algorithm CS590D 181 Outlier Discovery: Deviation-Based Approach • Identifies outliers by examining the main characteristics of objects in a group • Objects that “deviate” from this description are considered outliers • sequential exception technique – simulates the way in which humans can distinguish unusual objects from among a series of supposedly like objects • OLAP data cube technique – uses data cubes to identify regions of anomalies in large multidimensional data CS590D 182 Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Cluster Evaluation • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary CS590D 183 Problems and Challenges • Considerable progress has been made in scalable clustering methods – Partitioning: k-means, k-medoids, CLARANS – Hierarchical: BIRCH, CURE – Density-based: DBSCAN, CLIQUE, OPTICS – Grid-based: STING, WaveCluster – Model-based: Autoclass, Denclue, Cobweb • Current clustering techniques do not address all the requirements adequately • Constraint-based clustering analysis: Constraints exist in data space (bridges and highways) or in user queries CS590D 184 Constraint-Based Clustering Analysis • Clustering analysis: less parameters but more userdesired constraints, e.g., an ATM allocation problem CS590D 185 Clustering With Obstacle Objects Not Taking obstacles into account CS590D Taking obstacles into account 186 Summary • Cluster analysis groups objects based on their similarity and has wide applications • Measure of similarity can be computed for various types of data • Clustering algorithms can be categorized into partitioning methods, hierarchical methods, density-based methods, grid-based methods, and model-based methods • Outlier detection and analysis are very useful for fraud detection, etc. and can be performed by statistical, distance-based or deviation-based approaches • There are still lots of research issues on cluster analysis, such as constraint-based clustering CS590D 187 References (1) • R. Agrawal, J. Gehrke, D. Gunopulos, and P. Raghavan. Automatic subspace clustering of high dimensional data for data mining applications. SIGMOD'98 • • M. R. Anderberg. Cluster Analysis for Applications. Academic Press, 1973. M. Ankerst, M. Breunig, H.-P. Kriegel, and J. Sander. Optics: Ordering points to identify the clustering structure, SIGMOD’99. P. Arabie, L. J. Hubert, and G. De Soete. Clustering and Classification. World Scietific, 1996 M. Ester, H.-P. Kriegel, J. Sander, and X. Xu. A density-based algorithm for discovering clusters in large spatial databases. KDD'96. • • • M. Ester, H.-P. Kriegel, and X. Xu. Knowledge discovery in large spatial databases: Focusing techniques for efficient class identification. SSD'95. • D. Fisher. Knowledge acquisition via incremental conceptual clustering. Machine Learning, 2:139172, 1987. • D. Gibson, J. Kleinberg, and P. Raghavan. Clustering categorical data: An approach based on dynamic systems. In Proc. VLDB’98. • S. Guha, R. Rastogi, and K. Shim. Cure: An efficient clustering algorithm for large databases. SIGMOD'98. • A. K. Jain and R. C. Dubes. Algorithms for Clustering Data. Printice Hall, 1988. CS590D 188 References (2) • L. Kaufman and P. J. Rousseeuw. Finding Groups in Data: an Introduction to Cluster Analysis. John Wiley & Sons, 1990. • E. Knorr and R. Ng. Algorithms for mining distance-based outliers in large datasets. VLDB’98. • G. J. McLachlan and K.E. Bkasford. Mixture Models: Inference and Applications to Clustering. John Wiley and Sons, 1988. • P. Michaud. Clustering techniques. Future Generation Computer systems, 13, 1997. • R. Ng and J. Han. Efficient and effective clustering method for spatial data mining. VLDB'94. • E. Schikuta. Grid clustering: An efficient hierarchical clustering method for very large data sets. Proc. 1996 Int. Conf. on Pattern Recognition, 101-105. • G. Sheikholeslami, S. Chatterjee, and A. Zhang. WaveCluster: A multi-resolution clustering approach for very large spatial databases. VLDB’98. • W. Wang, Yang, R. Muntz, STING: A Statistical Information grid Approach to Spatial Data Mining, VLDB’97. • T. Zhang, R. Ramakrishnan, and M. Livny. BIRCH : an efficient data clustering method for very large databases. SIGMOD'96. CS590D 189