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Data Mining and Big Data Ahmed K. Ezzat, Data Mining Concepts and Techniques 1 Outline Data Mining Introduction Getting to know your data 2 • Why and What is Data Mining? • Multi-Dimensional View of Data Mining • What Kind of Data and Patterns Can be Mined? • What Technology Are Used? • What Are The Target Applications? Data Mining Introduction 3 1. Why Data Mining? The Explosive Growth of Data: from terabytes to petabytes Data collection and data availability Automated data collection tools, database systems, Web, computerized society Major sources of abundant data Business: Web, e-commerce, transactions, stocks, … Science: Remote sensing, bioinformatics, scientific simulation, … Society and everyone: news, digital cameras, YouTube We are drowning in data, but starving for knowledge! “Necessity is the mother of invention”—Data mining—Automated analysis of massive data sets 4 1. What Is Data Mining? Data mining (knowledge discovery from data) Extraction of interesting (non-trivial, implicit, previously unknown and potentially useful) patterns or knowledge from huge amount of data Alternative names Data mining: a misnomer? Knowledge discovery (mining) in databases (KDD), knowledge extraction, data/pattern analysis, data archeology, data dredging, information harvesting, business intelligence, etc. Watch out: Is everything “data mining”? Simple search and query processing (Deductive) expert systems 5 1. Knowledge Discovery (KDD) Process This is a view from typical database systems and data warehousing communities Pattern Evaluation Data mining plays an essential role in the knowledge discovery process Data Mining Task-relevant Data Data Warehouse Selection Data Cleaning Data Integration Databases 6 1. Data Mining in Business Intelligence Increasing potential to support business decisions Decision Making Data Presentation Visualization Techniques End User Business Analyst Data Mining Information Discovery Data Analyst Data Exploration Statistical Summary, Querying, and Reporting Data Preprocessing/Integration, Data Warehouses Data Sources Paper, Files, Web documents, Scientific experiments, Database Systems DBA 7 1. KDD Process: A Typical View from ML and Statistics Input Data Data PreProcessing Data integration Normalization Feature selection Dimension reduction Data Mining Pattern discovery Association & correlation Classification Clustering Outlier analysis ………… PostProcessing Pattern Pattern Pattern Pattern evaluation selection interpretation visualization This is a view from typical machine learning and statistics communities 8 2. Multi-Dimensional View of Data Mining Data to be mined Database data (extended-relational, object-oriented, heterogeneous, legacy), data warehouse, transactional data, stream, spatiotemporal, time-series, sequence, text and web, multi-media, graphs & social and information networks Knowledge to be mined (or: Data mining functions) Characterization, discrimination, association, classification, clustering, trend/deviation, outlier analysis, etc. Descriptive vs. predictive data mining Multiple/integrated functions and mining at multiple levels Techniques utilized Data-intensive, data warehouse (OLAP), machine learning, statistics, pattern recognition, visualization, high-performance, etc. Applications adapted Retail, telecommunication, banking, fraud analysis, bio-data mining, stock market analysis, text mining, Web mining, etc. 9 2. Data Mining: On What Kinds of Data? Database-oriented data sets and applications Relational database, data warehouse, transactional database Advanced data sets and advanced applications Data streams and sensor data Time-series data, temporal data, sequence data (incl. bio-sequences) Structure data, graphs, social networks and multi-linked data Object-relational databases Heterogeneous databases and legacy databases Spatial data and spatiotemporal data Multimedia database Text databases The World-Wide Web 10 3. Data Mining Function: (1) Generalization Information integration and data warehouse construction Data cleaning, transformation, integration, and multidimensional data model Data cube technology Scalable methods for computing (i.e., materializing) multidimensional aggregates OLAP (online analytical processing) Multidimensional concept description: Characterization and discrimination Generalize, summarize, and contrast data characteristics, e.g., dry vs. wet region 11 3. Data Mining Function: (2) Association and Correlation Analysis Frequent patterns (or frequent itemsets) What items are frequently purchased together in your Walmart? Association, correlation vs. causality A typical association rule Diaper Beer [0.5%, 75%] (support, confidence) Are strongly associated items also strongly correlated? How to mine such patterns and rules efficiently in large datasets? How to use such patterns for classification, clustering, and other applications? 12 3. Data Mining Function: (3) Classification Classification and label prediction Construct models (functions) based on some training examples Describe and distinguish classes or concepts for future prediction Predict some unknown class labels Typical methods E.g., classify countries based on (climate), or classify cars based on (gas mileage) Decision trees, naïve Bayesian classification, support vector machines, neural networks, rule-based classification, patternbased classification, logistic regression, … Typical applications: Credit card fraud detection, direct marketing, classifying stars, diseases, web-pages, … 13 3. Data Mining Function: (4) Cluster Analysis Unsupervised learning (i.e., Class label is unknown) Group data to form new categories (i.e., clusters), e.g., cluster houses to find distribution patterns Principle: Maximizing intra-class similarity & minimizing interclass similarity Many methods and applications 14 3. Data Mining Function: (5) Outlier Analysis Outlier analysis Outlier: A data object that does not comply with the general behavior of the data Noise or exception? ― One person’s garbage could be another person’s treasure Methods: by product of clustering or regression analysis, … Useful in fraud detection, rare events analysis 15 3. Time and Ordering: Sequential Pattern, Trend and Evolution Analysis Sequence, trend and evolution analysis Trend, time-series, and deviation analysis: e.g., regression and value prediction Sequential pattern mining e.g., first buy digital camera, then buy large SD memory cards Periodicity analysis Motifs and biological sequence analysis Approximate and consecutive motifs Similarity-based analysis Mining data streams Ordered, time-varying, potentially infinite, data streams 16 4. Structure and Network Analysis Graph mining Information network analysis Finding frequent sub-graphs (e.g., chemical compounds), trees (XML), substructures (web fragments) Social networks: actors (objects, nodes) and relationships (edges) e.g., author networks in CS, terrorist networks Multiple heterogeneous networks A person could be multiple information networks: friends, family, classmates, … Links carry a lot of semantic information: Link mining Web mining Web is a big information network: from PageRank to Google Analysis of Web information networks Web community discovery, opinion mining, usage mining, … 17 4. Data Mining: Confluence of Multiple Disciplines Machine Learning Applications Algorithm Pattern Recognition Data Mining Database Technology Statistics Visualization High-Performance Computing 18 4. Why Confluence of Multiple Disciplines? Tremendous amount of data High-dimensionality of data Micro-array may have tens of thousands of dimensions High complexity of data Algorithms must be highly scalable to handle such as tera-bytes of data Data streams and sensor data Time-series data, temporal data, sequence data Structure data, graphs, social networks and multi-linked data Heterogeneous databases and legacy databases Spatial, spatiotemporal, multimedia, text and Web data Software programs, scientific simulations New and sophisticated applications 19 5. Applications of Data Mining Web page analysis: from web page classification, clustering to PageRank & HITS algorithms Collaborative analysis & recommender systems Basket data analysis to targeted marketing Biological and medical data analysis: classification, cluster analysis (microarray data analysis), biological sequence analysis, biological network analysis Data mining and software engineering (e.g., IEEE Computer, Aug. 2009 issue) From major dedicated data mining systems/tools (e.g., SAS, MS SQLServer Analysis Manager, Oracle Data Mining Tools) to invisible data mining 20 Summary Data mining: Discovering interesting patterns and knowledge from massive amount of data A natural evolution of database technology, in great demand, with wide applications A KDD process includes data cleaning, data integration, data selection, transformation, data mining, pattern evaluation, and knowledge presentation Mining can be performed in a variety of data Data mining functionalities: characterization, discrimination, association, classification, clustering, outlier and trend analysis, etc. Data mining technologies and applications Major issues in data mining 21 • Data Objects & Attribute Types • Basic Statistical Descriptions of Data • Measuring Data Similarity and Dissimilarity • Data Visualization Getting To Know Your Data 22 1. Types of Data Sets pla y ball score game wi n lost timeout season coach team Record Relational records Data matrix, e.g., numerical matrix, crosstabs Document data: text documents: termfrequency vector Document 1 Transaction data Document 2 Graph and network World Wide Web Document 3 Social or information networks Molecular Structures Ordered Video data: sequence of images Temporal data: time-series Sequential Data: transaction sequences Genetic sequence data Spatial, image and multimedia: Spatial data: maps Image data: Video data: 3 0 5 0 2 6 0 2 0 2 0 7 0 2 1 0 0 3 0 0 0 1 0 0 1 2 2 0 3 0 TID Items 1 Bread, Coke, Milk 2 3 4 5 Beer, Bread Beer, Coke, Diaper, Milk Beer, Bread, Diaper, Milk Coke, Diaper, Milk 23 1. Important Characteristics of Structured Data Dimensionality Sparsity Only presence counts Resolution Curse of dimensionality Patterns depend on the scale Distribution Centrality and dispersion 24 1. Data Objects Data sets are made up of data objects. A data object represents an entity. Examples: sales database: customers, store items, sales medical database: patients, treatments university database: students, professors, courses Also called samples , examples, instances, data points, objects, tuples. Data objects are described by attributes. Database rows -> data objects; columns ->attributes. 25 1. Attributes Attribute (or dimensions, features, variables): a data field, representing a characteristic or feature of a data object. E.g., customer _ID, name, address Types: Nominal Binary Numeric: quantitative Interval-scaled Ratio-scaled 26 1. Attribute Types Nominal: categories, states, or “names of things” Hair_color = {auburn, black, blond, brown, grey, red, white} marital status, occupation, ID numbers, zip codes Binary Nominal attribute with only 2 states (0 and 1) Symmetric binary: both outcomes equally important e.g., gender Asymmetric binary: outcomes not equally important. e.g., medical test (positive vs. negative) Convention: assign 1 to most important outcome (e.g., HIV positive) Ordinal Values have a meaningful order (ranking) but magnitude between successive values is not known. Size = {small, medium, large}, grades, army rankings 27 1. Numeric Attribute Types Quantity (integer or real-valued) Interval Measured on a scale of equal-sized units Values have order E.g., temperature in C˚or F˚, calendar dates No true zero-point Ratio Inherent zero-point We can speak of values as being an order of magnitude larger than the unit of measurement (10 K˚ is twice as high as 5 K˚). e.g., temperature in Kelvin, length, counts, monetary quantities 28 1. Discrete vs. Continuous Attributes Discrete Attribute Has only a finite or countably infinite set of values E.g., zip codes, profession, or the set of words in a collection of documents Sometimes, represented as integer variables Note: Binary attributes are a special case of discrete attributes Continuous Attribute Has real numbers as attribute values E.g., temperature, height, or weight Practically, real values can only be measured and represented using a finite number of digits Continuous attributes are typically represented as floating-point variables 29 2. Basic Statistical Descriptions of Data Motivation Data dispersion characteristics median, max, min, quantiles, outliers, variance, etc. Numerical dimensions correspond to sorted intervals To better understand the data: central tendency, variation and spread Data dispersion: analyzed with multiple granularities of precision Boxplot or quantile analysis on sorted intervals Dispersion analysis on computed measures Folding measures into numerical dimensions Boxplot or quantile analysis on the transformed cube 30 2. Measuring the Central Tendency Mean (algebraic measure) (sample vs. population): Note: n is sample size and N is population size. 1 n x xi n i 1 N n Weighted arithmetic mean: Trimmed mean: chopping extreme values x Median: x Middle value if odd number of values, or average of w x i 1 n i i w i 1 i the middle two values otherwise Estimated by interpolation (for grouped data): Mode median L1 ( n / 2 ( freq)l freqmedian Value that occurs most frequently in the data Unimodal, bimodal, trimodal Empirical formula: ) width mean mode 3 (mean median) 31 2. Symmetric vs. Skewed Data Median, mean and mode of symmetric, positively and negatively skewed data positively skewed symmetric negatively skewed 32 2. Measuring the Dispersion of Data Quartiles, outliers and boxplots Quartiles: Q1 (25th percentile), Q3 (75th percentile) Inter-quartile range: IQR = Q3 – Q1 Five number summary: min, Q1, median, Q3, max Boxplot: ends of the box are the quartiles; median is marked; add whiskers, and plot outliers individually Outlier: usually, a value higher/lower than 1.5 x IQR Variance and standard deviation (sample: s, population: σ) Variance: (algebraic, scalable computation) 1 n 1 n 2 1 n 2 s ( xi x ) [ xi ( xi ) 2 ] n 1 i 1 n 1 i 1 n i 1 2 1 N 2 n 1 ( x ) i N i 1 2 n xi 2 2 i 1 Standard deviation s (or σ) is the square root of variance s2 (or σ2) 33 2. Boxplot Analysis Five-number summary of a distribution Minimum, Q1, Median, Q3, Maximum Boxplot Data is represented with a box The ends of the box are at the first and third quartiles, i.e., the height of the box is IQR The median is marked by a line within the box Whiskers: two lines outside the box extended to Minimum and Maximum Outliers: points beyond a specified outlier threshold, plotted individually 34 2. Properties of Normal Distribution Curve The normal (distribution) curve From μ–σ to μ+σ: contains about 68% of the measurements (μ: mean, σ: standard deviation) From μ–2σ to μ+2σ: contains about 95% of it From μ–3σ to μ+3σ: contains about 99.7% of it 35 2. Graphic Displays of Basic Statistical Descriptions Boxplot: graphic display of five-number summary Histogram: x-axis are values, y-axis represent frequencies Quantile plot: each value xi is paired with fi indicating that approximately 100 fi % of data are xi Quantile-quantile (q-q) plot: graphs the quantiles of one univariant distribution against the corresponding quantiles of another Scatter plot: each pair of values is a pair of coordinates and plotted as points in the plane 36 2. Histogram Analysis Histogram: Graph display of tabulated frequencies, shown as bars 40 It shows what proportion of cases fall into each of several categories 30 35 25 Differs from a bar chart in that it is 20 the area of the bar that denotes the 15 value, not the height as in bar charts, a crucial distinction when the 10 categories are not of uniform width 5 The categories are usually specified 0 as non-overlapping intervals of some variable. The categories (bars) must be adjacent 10000 30000 50000 70000 90000 37 2. Histograms Often Tell More than Boxplots The two histograms shown in the left may have the same boxplot representation The same values for: min, Q1, median, Q3, max But they have rather different data distributions 38 2. Quantile Plot Displays all of the data (allowing the user to assess both the overall behavior and unusual occurrences) Plots quantile information For a data xi data sorted in increasing order, fi indicates that approximately 100 fi% of the data are below or equal to the value xi 39 2. Quantile-Quantile (Q-Q) Plot Graphs the quantiles of one univariate distribution against the corresponding quantiles of another View: Is there is a shift in going from one distribution to another? Example shows unit price of items sold at Branch 1 vs. Branch 2 for each quantile. Unit prices of items sold at Branch 1 tend to be lower than those at Branch 2. 40 2. Scatter plot Provides a first look at bivariate data to see clusters of points, outliers, etc. Each pair of values is treated as a pair of coordinates and plotted as points in the plane 41 2. Positively and Negatively Correlated Data The left half fragment is positively correlated The right half is negative correlated 42 2. Uncorrelated Data 43 3. Similarity and Dissimilarity Similarity Numerical measure of how alike two data objects are Value is higher when objects are more alike Often falls in the range [0,1] Dissimilarity (e.g., distance) Numerical measure of how different two data objects are Lower when objects are more alike Minimum dissimilarity is often 0 Upper limit varies Proximity refers to a similarity or dissimilarity 44 3. Data Matrix and Dissimilarity Matrix Data matrix n data points with p dimensions Two modes Dissimilarity matrix n data points, but registers only the distance A triangular matrix Single mode x11 ... x i1 ... x n1 ... x1f ... ... ... ... xif ... ... ... ... ... xnf ... ... 0 d(2,1) 0 d(3,1) d ( 3,2) 0 : : : d ( n,1) d ( n,2) ... x1p ... xip ... xnp ... 0 45 3. Proximity Measure for Nominal Attributes Can take 2 or more states, e.g., red, yellow, blue, green (generalization of a binary attribute) 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 attributes Creating a new binary attribute for each of the M nominal states 46 3. Proximity Measure for Binary Attributes Object j A contingency table for binary data Object i Distance measure for symmetric binary variables: Distance measure for asymmetric binary variables: Jaccard coefficient (similarity measure for asymmetric binary variables): Note: Jaccard coefficient is the same as “coherence”: 47 3. 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 1, and the value N be 0 01 0.33 2 01 11 d ( jack , jim ) 0.67 111 1 2 d ( jim , mary ) 0.75 11 2 d ( jack , mary ) 48 3. Standardizing Numeric Data Z-score: z x X: raw score to be standardized, μ: mean of the population, σ: standard deviation the distance between the raw score and the population mean in units of the standard deviation negative when the raw score is below the mean, “+” when above An alternative way: Calculate the mean absolute deviation sf 1 n (| x1 f m f | | x2 f m f | ... | xnf m f |) where mf 1 n (x1 f x2 f ... xnf ) xif m f zif standardized measure (z-score): sf . Using mean absolute deviation is more robust than using standard deviation 49 3. Example: Data Matrix and Dissimilarity Matrix Data Matrix point x1 x2 x3 x4 attribute1 attribute2 1 2 3 5 2 0 4 5 Dissimilarity Matrix (with Euclidean Distance) x1 x1 x2 x3 x4 x2 0 3.61 5.1 4.24 x3 0 5.1 1 x4 0 5.39 0 50 3. Distance on Numeric Data: Minkowski Distance Minkowski distance: A popular distance measure where i = (xi1, xi2, …, xip) and j = (xj1, xj2, …, xjp) are two pdimensional data objects, and h is the order (the distance so defined is also called L-h norm) Properties: d(i, j) > 0 if i ≠ j, and d(i, i) = 0 (Positive definiteness) d(i, j) = d(j, i) (Symmetry) d(i, j) d(i, k) + d(k, j) (Triangle Inequality) A distance that satisfies these properties is a metric 51 3. Special Cases of Minkowski Distance h = 1: Manhattan (city block, L1 norm) distance E.g., the Hamming distance: the number of bits that are different between two binary vectors d (i, j) | x x | | x x | ... | x x | i1 j1 i2 j 2 ip jp h = 2: (L2 norm) Euclidean distance d (i, j) (| x x |2 | x x |2 ... | x x |2 ) i1 j1 i2 j2 ip jp h . “supremum” (Lmax norm, L norm) distance. This is the maximum difference between any component (attribute) of the vectors 52 3. Example: Minkowski Distance Dissimilarity Matrices Manhattan (L1) point x1 x2 x3 x4 attribute 1 attribute 2 1 2 3 5 2 0 4 5 L x1 x2 x3 x4 x1 0 5 3 6 x2 x3 x4 0 6 1 0 7 0 x2 x3 x4 Euclidean (L2) L2 x1 x2 x3 x4 x1 0 3.61 2.24 4.24 0 5.1 1 0 5.39 0 Supremum L x1 x2 x3 x4 x1 x2 0 3 2 3 x3 0 5 1 x4 0 5 0 53 3. Ordinal Variables An ordinal variable can be discrete or continuous Order is important, e.g., rank Can be treated like interval-scaled 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 rif 1 zif M f 1 compute the dissimilarity using methods for interval-scaled variables rif {1,...,M f } 54 3. Attributes of Mixed Type A database may contain all attribute types Nominal, symmetric binary, asymmetric binary, numeric, ordinal One may use a weighted formula to combine their effects pf 1 ij( f ) dij( f ) d (i, j) pf 1 ij( f ) f is binary or nominal: dij(f) = 0 if xif = xjf , or dij(f) = 1 otherwise f is numeric: use the normalized distance f is ordinal Compute ranks rif and rif 1 z Treat zif as interval-scaled if M f 1 55 4. Pixel-Oriented Visualization Techniques For a data set of m dimensions, create m windows on the screen, one for each dimension The m dimension values of a record are mapped to m pixels at the corresponding positions in the windows The colors of the pixels reflect the corresponding values (a) Income (b) Credit Limit (c) transaction volume (d) age 56 4. Direct Data Visualization Ribbons with Twists Based on Vorticity 57 Used by permission of B. Wright, Visible Decisions Inc. 4. Landscapes news articles visualized as a landscape Visualization of the data as perspective landscape The data needs to be transformed into a (possibly artificial) 2D spatial representation which preserves the characteristics of the data 58 4. Tree-Map Screen-filling method which uses a hierarchical partitioning of the screen into regions depending on the attribute values The x- and y-dimension of the screen are partitioned alternately according to the attribute values (classes) MSR Netscan Image 59 4. InfoCube A 3-D visualization technique where hierarchical information is displayed as nested semi-transparent cubes The outermost cubes correspond to the top level data, while the subnodes or the lower level data are represented as smaller cubes inside the outermost cubes, and so on 60 4. Visualizing Complex Data and Relations Visualizing non-numerical data: text and social networks Tag cloud: visualizing user-generated tags The importance of tag is represented by font size/color Besides text data, there are also methods to visualize relationships, such as visualizing social networks Newsmap: Google News Stories in 2005 61 Summary Data attribute types: nominal, binary, ordinal, interval-scaled, ratioscaled Many types of data sets, e.g., numerical, text, graph, Web, image. Gain insight into the data by: Basic statistical data description: central tendency, dispersion, graphical displays Data visualization: map data onto graphical primitives Measure data similarity Above steps are the beginning of data preprocessing. Many methods have been developed but still an active area of research. 62 END 63