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Data Mining: Concepts and Techniques Adapted to Computational Biology course, IST 2012/13, by Sara C. Madeira — Chapter 6 — Jiawei Han Department of Computer Science University of Illinois at Urbana-Champaign www.cs.uiuc.edu/~hanj ©2006 Jiawei Han and Micheline Kamber, All rights reserved December 13, 2012 Data Mining: Concepts and Techniques 1 Outline What is classification? Issues regarding classification Classification by decision tree induction Bayesian classification Lazy learners (or learning from your neighbors) Model Evaluation December 13, 2012 Data Mining: Concepts and Techniques 2 Classification Classification predicts categorical class labels (discrete or nominal) classifies data (constructs a model) based on the training set and the values (class labels) in a classifying attribute and uses it in classifying new data Prediction models continuous-valued functions, i.e., predicts unknown or missing values Typical applications Credit approval Target marketing Medical diagnosis Fraud detection December 13, 2012 Data Mining: Concepts and Techniques 3 Classification—A Two-Step Process Model construction: describing a set of predetermined classes Each tuple/sample is assumed to belong to a predefined class, as determined by the class label attribute The set of tuples used for model construction is training set The model is represented as classification rules, decision trees, or mathematical formulae Model usage: for classifying future or unknown objects Estimate accuracy of the model The known label of test sample is compared with the classified result from the model Accuracy rate is the percentage of test set samples that are correctly classified by the model Test set is independent of training set, otherwise over-fitting will occur If the accuracy is acceptable, use the model to classify data tuples whose class labels are not known December 13, 2012 Data Mining: Concepts and Techniques 4 Process (1): Model Construction Classification Algorithms Training Data Classifier (Model) IF rank = ‘professor’ OR years > 6 THEN tenured = ‘yes’ December 13, 2012 Data Mining: Concepts and Techniques 5 Process (2): Using the Model in Prediction Classifier Testing Data Unseen Data (Jeff, Professor, 4) Tenured? December 13, 2012 Data Mining: Concepts and Techniques 6 Supervised vs. Unsupervised Learning Supervised learning (classification) Supervision: The training data (observations, measurements, etc.) are accompanied by labels indicating the class of the observations New data is classified based on the training set Unsupervised learning (clustering) The class labels of training data is unknown Given a set of measurements, observations, etc. with the aim of establishing the existence of classes or clusters in the data December 13, 2012 Data Mining: Concepts and Techniques 7 Outline What is classification? Issues regarding classification Classification by decision tree induction Bayesian classification Lazy learners (or learning from your neighbors) Model Evaluation and Selection December 13, 2012 Data Mining: Concepts and Techniques 8 Issues: Data Preparation Data cleaning Relevance analysis (feature selection) Preprocess data in order to reduce noise and handle missing values Remove the irrelevant or redundant attributes Data transformation Generalize and/or normalize data December 13, 2012 Data Mining: Concepts and Techniques 9 Issues: Evaluating Classification Methods Accuracy classifier accuracy: predicting class label predictor accuracy: guessing value of predicted attributes Speed time to construct the model (training time) time to use the model (classification/prediction time) Robustness: handling noise and missing values Scalability: efficiency in coupling more data Interpretability understanding and insight provided by the model Other measures, e.g., goodness of rules, such as decision tree size or compactness of classification rules December 13, 2012 Data Mining: Concepts and Techniques 10 Outline What is classification? Issues regarding classification Classification by decision tree induction Bayesian classification Lazy learners (or learning from your neighbors) Model Evaluation and Selection December 13, 2012 Data Mining: Concepts and Techniques 11 Decision Tree Induction: Training Dataset This follows an example of Quinlan’s ID3 (Playing Tennis) December 13, 2012 Data Mining: Concepts and Techniques 12 Output: A Decision Tree for “buys_computer” age? <=30 31..40 overcast student? no no December 13, 2012 >40 credit rating? yes excellent yes yes no Data Mining: Concepts and Techniques fair yes 13 Algorithm for Decision Tree Induction Basic algorithm (a greedy algorithm) Tree is constructed in a top-down recursive divide-and-conquer manner At start, all the training examples are at the root Attributes are categorical (if continuous-valued, they are discretized in advance) Examples are partitioned recursively based on selected attributes Test attributes are selected on the basis of a heuristic or statistical measure (e.g., information gain) Conditions for stopping partitioning All samples for a given node belong to the same class There are no remaining attributes for further partitioning – majority voting is employed for classifying the leaf There are no samples left December 13, 2012 Data Mining: Concepts and Techniques 14 Attribute Selection Measure: Information Gain (ID3/C4.5) Select the attribute with the highest information gain Let pi be the probability that an arbitrary tuple in D belongs to class Ci, estimated by |Ci, D|/|D| Expected information (entropy) needed to classify a tuple m in D: Info(D) = −∑ pi log 2 ( pi ) Entropy(D) i=1 Information needed (after using A to split D into v Entropy(Dj) v | D | partitions) to classify D: InfoA (D) = ∑ j × I(D j ) Gain(D,A) j=1 | D | € Information gained by branching on attribute A Gain(A) = Info(D) − InfoA (D) December 13, 2012 € Data Mining: Concepts and Techniques 15 Attribute Selection: Information Gain g g Class P: buys_computer = “yes” Class N: buys_computer = “no” Info(D) = I(9,5) = − Entropy([9+,5-]) Infoage (D) = 9 9 5 5 log 2 ( ) − log 2 ( ) =0.940 14 14 14 14 -Entropy([2+,3-]) € € 5 4 I(2,3) + I(4,0) 14 14 5 + I(3,2) = 0.694 14 5 I(2,3) means “age <=30” has 5 14 out of 14 samples, with 2 yes’es and 3 no’s. Hence € Gain(age) = Info(D) − Infoage (D) = 0.246 Similarly, € December 13, 2012 Data Mining: Concepts and Techniques 16 Computing Information-Gain for Continuous-Value Attributes Let attribute A be a continuous-valued attribute Must determine the best split point for A Sort the value A in increasing order Typically, the midpoint between each pair of adjacent values is considered as a possible split point (ai+ai+1)/2 is the midpoint between the values of ai and ai+1 The point with the minimum expected information requirement for A is selected as the split-point for A Split: D1 is the set of tuples in D satisfying A ≤ split-point, and D2 is the set of tuples in D satisfying A > split-point December 13, 2012 Data Mining: Concepts and Techniques 17 Gain Ratio for Attribute Selection (C4.5) Information gain measure is biased towards attributes with a large number of values C4.5 (a successor of ID3) uses gain ratio to overcome the problem (normalization to information gain) v | Dj | | Dj | SplitInfoA (D) = −∑ × log 2 ( ) |D| |D| j=1 GainRatio(A) = Gain(A)/SplitInfo(A) Ex. € SplitInfoA (D) = − 4 4 6 6 4 4 × log 2 ( ) − × log 2 ( ) − × log 2 ( ) = 0.926 14 14 14 14 14 14 gain_ratio(income) = 0.029/0.926 = 0.031 The attribute with the maximum gain ratio is selected as € the splitting attribute December 13, 2012 Data Mining: Concepts and Techniques 18 Overfitting and Tree Pruning Overfitting: An induced tree may overfit the training data Too many branches, some may reflect anomalies due to noise or outliers Poor accuracy for unseen samples Two approaches to avoid overfitting Prepruning: Halt tree construction early—do not split a node if this would result in the goodness measure falling below a threshold Difficult to choose an appropriate threshold Postpruning: Remove branches from a “fully grown” tree—get a sequence of progressively pruned trees Use a set of data different from the training data to decide which is the “best pruned tree” December 13, 2012 Data Mining: Concepts and Techniques 19 Enhancements to Basic Decision Tree Induction Allow for continuous-valued attributes Dynamically define new discrete-valued attributes that partition the continuous attribute value into a discrete set of intervals Handle missing attribute values Assign the most common value of the attribute Assign probability to each of the possible values Attribute construction Create new attributes based on existing ones that are sparsely represented This reduces fragmentation, repetition, and replication December 13, 2012 Data Mining: Concepts and Techniques 20 Example: Decision Tree ID3 for “Play Tennis” December 13, 2012 Data Mining: Concepts and Techniques 21 Training Examples Day D1 D2 D3 D4 D5 D6 D7 D8 D9 D10 D11 D12 D13 D14 Outlook Sunny Sunny Overcast Rain Rain Rain Overcast Sunny Sunny Rain Sunny Overcast Overcast Rain Temp. Hot Hot Hot Mild Cool Cool Cool Mild Cold Mild Mild Mild Hot Mild Humidity High High High High Normal Normal Normal High Normal Normal Normal High Normal High Wind Weak Strong Weak Weak Weak Strong Weak Weak Weak weak Strong Strong Weak Strong Play Tennis No No Yes Yes Yes No Yes No Yes Yes Yes Yes Yes No Decision Tree for PlayTennis Outlook Sunny Humidity High No Overcast Rain Yes Normal Yes Wind Strong No Weak Yes Decision Tree for “Play Tennis” Outlook Sunny No Rain Each internal node tests an attribute Humidity High Overcast Normal Yes Each branch corresponds to an attribute value node Each leaf node assigns a classification Decision Tree for “Play Tennis” Outlook Sunny Temperature Hot Humidity High Wind PlayTennis Weak ? No Outlook Sunny Humidity High No Overcast Rain Yes Normal Yes Wind Strong No Weak Yes Decision Tree for Conjunction Outlook=Sunny ∧ Wind=Weak Outlook Sunny Wind Strong No Overcast No Weak Yes Rain No Decision Tree for Disjunction Outlook=Sunny ∨ Wind=Weak Outlook Sunny Overcast Yes Rain Wind Strong No Wind Weak Strong Yes No Weak Yes Decision Tree for XOR Outlook=Sunny XOR Wind=Weak Outlook Sunny Overcast Wind Strong Yes Rain Wind Weak No Strong No Wind Weak Strong Yes No Weak Yes Decision Tree • decision trees represent disjunctions of conjunctions Outlook Sunny Humidity High No Overcast Rain Yes Normal Yes (Outlook=Sunny ∧ Humidity=Normal) ∨ (Outlook=Overcast) ∨ (Outlook=Rain ∧ Wind=Weak) Wind Strong No Weak Yes Top-Down Induction of Decision Trees ID3 1. A ← the “best” decision attribute for next node 2. Assign A as decision attribute for node 3. For each value of A create new descendant 4. Sort training examples to leaf node according to the attribute value of the branch 5. If all training examples are perfectly classified (same value of target attribute) stop, else iterate over new leaf nodes. Which Attribute is ”best”? [29+,35-] True [21+, 5-] A1=? A2=? False [8+, 30-] True [18+, 33-] [29+,35-] False [11+, 2-] Information Gain Gain(D,A): expected reduction in entropy due to sorting D on attribute A Gain(D,A)=Entropy(D) - ∑v∈values(A) |Dv|/|D| Entropy(Dv) Entropy([29+,35-]) = -29/64 log2 29/64 – 35/64 log2 35/64 = 0.99 [29+,35-] True [21+, 5-] A1=? A2=? False [8+, 30-] True [18+, 33-] [29+,35-] False [11+, 2-] Information Gain Entropy([21+,5-]) = 0.71 Entropy([8+,30-]) = 0.74 Gain(S,A1)=Entropy(S) -26/64*Entropy([21+,5-]) -38/64*Entropy([8+,30-]) =0.27 Entropy([18+,33-]) = 0.94 Entropy([8+,30-]) = 0.62 Gain(S,A2)=Entropy(S) -51/64*Entropy([18+,33-]) -13/64*Entropy([11+,2-]) =0.12 0.27 > 0.12 => A1 is best [29+,35-] True [21+, 5-] A1=? A2=? False [8+, 30-] True [18+, 33-] [29+,35-] False [11+, 2-] Training Examples Day D1 D2 D3 D4 D5 D6 D7 D8 D9 D10 D11 D12 D13 D14 Outlook Sunny Sunny Overcast Rain Rain Rain Overcast Sunny Sunny Rain Sunny Overcast Overcast Rain Temp. Hot Hot Hot Mild Cool Cool Cool Mild Cold Mild Mild Mild Hot Mild Humidity High High High High Normal Normal Normal High Normal Normal Normal High Normal High Wind Weak Strong Weak Weak Weak Strong Weak Weak Weak Weak Strong Strong Weak Strong Play Tennis No No Yes Yes Yes No Yes No Yes Yes Yes Yes Yes No Selecting the First Attribute D=[9+,5-] E=0.940 D=[9+,5-] E=0.940 Humidity High Wind Normal [3+, 4-] E=0.985 Gain(D,Humidity) =0.940-(7/14)*0.985 – (7/14)*0.592 =0.151 Weak Strong [6+, 1-] [7+, 2-] [3+, 2-] E=0.592 E=0.764 E=0.971 Gain(D,Wind) =0.940-(9/14)*0.764 – (5/14)*0.971 =0.102 Selecting the First Attribute D=[9+,5-] E=0.940 Outlook Sunny [2+, 3-] E=0.971 Over cast Rain [4+, 0] E=0.0 Gain(D,Outlook) =0.940-(5/14)*0.971 -(4/14)*0.0 – (5/14)*0.0971 =0.247 [3+, 2-] E=0.971 Selecting the Next Attribute [D1,D2,…,D14] [9+,5-] Sunny Dsunny=[D1,D2,D8,D9,D11] [2+,3-] ? Outlook Overcast Rain [D3,D7,D12,D13] [4+,0-] [D4,D5,D6,D10,D14] [3+,2-] Yes ? Gain(Dsunny , Humidity)=0.970-(3/5)0.0 – 2/5(0.0) = 0.970 Gain(Dsunny , Temp.)=0.970-(2/5)0.0 –2/5(1.0)-(1/5)0.0 = 0.570 Gain(Dsunny , Wind)=0.970= -(2/5)1.0 – 3/5(0.918) = 0.019 Selecting the Next Attribute Outlook Sunny Overcast Humidity Yes [D3,D7,D12,D13] High No [D1,D2] Normal Rain ? [D4,D5,D6,D10,D14] [3+,2-] ? Yes [D8,D9,D11] Gain(Drain , Humidity)= … Gain(Drain , Temp.)= … Gain(Drain , Wind)=… Final ID3 Decision Tree Outlook Sunny Overcast Humidity Rain Yes Wind [D3,D7,D12,D13] High Normal No Yes [D1,D2] [D8,D9,D11] Strong No [D6,D14] Weak Yes [D4,D5,D10] Outline What is classification? Issues regarding classification Classification by decision tree induction Bayesian classification Lazy learners (or learning from your neighbors) Model Evaluation and Selection December 13, 2012 Data Mining: Concepts and Techniques 40 Bayesian Classification: Why? A statistical classifier: performs probabilistic prediction, i.e., predicts class membership probabilities Foundation: Based on Bayes’ Theorem. Performance: A simple Bayesian classifier, naïve Bayesian classifier, has comparable performance with decision tree and selected neural network classifiers Incremental: Each training example can incrementally increase/decrease the probability that a hypothesis is correct — prior knowledge can be combined with observed data Standard: Even when Bayesian methods are computationally intractable, they can provide a standard of optimal decision making against which other methods can be measured December 13, 2012 Data Mining: Concepts and Techniques 41 Bayesian Theorem: Basics Let X be a data sample (“evidence”): class label is unknown Let H be a hypothesis that X belongs to class C Classification is to determine P(H|X), the probability that the hypothesis holds given the observed data sample X P(H) (prior probability), the initial probability E.g., X will buy computer, regardless of age, income, … P(X): probability that sample data is observed P(X|H) (posteriori probability), the probability of observing the sample X, given that the hypothesis holds E.g., Given that X will buy computer, the prob. that X is 31..40, medium income December 13, 2012 Data Mining: Concepts and Techniques 42 Bayesian Theorem Given training data X, posteriori probability of a hypothesis H, P(H|X), follows the Bayes theorem Informally, this can be written as posteriori = likelihood x prior/evidence Predicts X belongs to C2 iff the probability P(Ci|X) is the highest among all the P(Ck|X) for all the k classes Practical difficulty: require initial knowledge of many probabilities, significant computational cost December 13, 2012 Data Mining: Concepts and Techniques 43 Towards Naïve Bayesian Classifier Let D be a training set of tuples and their associated class labels, and each tuple is represented by an n-D attribute vector X = (x1, x2, …, xn) Suppose there are m classes C1, C2, …, Cm. Classification is to derive the maximum posteriori, i.e., the maximal P(Ci|X) This can be derived from Bayes’ theorem Since P(X) is constant for all classes, only needs to be maximized December 13, 2012 Data Mining: Concepts and Techniques 44 Derivation of Naïve Bayes Classifier A simplified assumption: attributes are conditionally independent (i.e., no dependence relation between attributes): This greatly reduces the computation cost: Only counts the class distribution If Ak is categorical, P(xk|Ci) is the # of tuples in Ci having value xk for Ak divided by |Ci, D| (# of tuples of Ci in D) If Ak is continous-valued, P(xk|Ci) is usually computed based on Gaussian distribution with a mean μ and standard deviation σ and P(xk|Ci) is December 13, 2012 Data Mining: Concepts and Techniques 45 Naïve Bayes Classifier: Training Dataset Class: C1:buys_computer = ‘yes’ C2:buys_computer = ‘no’ Data sample X = (age <=30, Income = medium, Student = yes Credit_rating = Fair) December 13, 2012 Data Mining: Concepts and Techniques 46 Naïve Bayes Classifier: An Example P(Ci): Compute P(X|Ci) for each class P(buys_computer = “yes”) = 9/14 = 0.643 P(buys_computer = “no”) = 5/14= 0.357 P(age = “<=30” | buys_computer = “yes”) = 2/9 = 0.222 P(age = “<= 30” | buys_computer = “no”) = 3/5 = 0.6 P(income = “medium” | buys_computer = “yes”) = 4/9 = 0.444 P(income = “medium” | buys_computer = “no”) = 2/5 = 0.4 P(student = “yes” | buys_computer = “yes) = 6/9 = 0.667 P(student = “yes” | buys_computer = “no”) = 1/5 = 0.2 P(credit_rating = “fair” | buys_computer = “yes”) = 6/9 = 0.667 P(credit_rating = “fair” | buys_computer = “no”) = 2/5 = 0.4 X = (age <= 30 , income = medium, student = yes, credit_rating = fair) P(X|Ci) : P(X|buys_computer = “yes”) = 0.222 x 0.444 x 0.667 x 0.667 = 0.044 P(X|buys_computer = “no”) = 0.6 x 0.4 x 0.2 x 0.4 = 0.019 P(X|Ci)*P(Ci) : P(X|buys_computer = “yes”) * P(buys_computer = “yes”) = 0.028 P(X|buys_computer = “no”) * P(buys_computer = “no”) = 0.007 Therefore, X belongs to class (“buys_computer = yes”) December 13, 2012 Data Mining: Concepts and Techniques 47 Avoiding the 0-Probability Problem Naïve Bayesian prediction requires each conditional probability to be non-zero. Otherwise, the predicted probability will be zero Ex. Suppose a dataset with 1000 tuples, income=low (0), income= medium (990), and income = high (10), Use Laplacian correction (or Laplacian estimator) Adding 1 to each case Prob(income = low) = 1/1003 Prob(income = medium) = 991/1003 Prob(income = high) = 11/1003 The “corrected” prob. estimates are close to their “uncorrected” counterparts December 13, 2012 Data Mining: Concepts and Techniques 48 Naïve Bayes Classifier: Comments Advantages Easy to implement Good results obtained in most of the cases Disadvantages Assumption: class conditional independence, therefore loss of accuracy Practically, dependencies exist among variables E.g., hospitals: patients: Profile: age, family history, etc. Symptoms: fever, cough etc., Disease: lung cancer, diabetes, etc. Dependencies among these cannot be modeled by Naïve Bayesian Classifier How to deal with these dependencies? Bayesian Belief Networks December 13, 2012 Data Mining: Concepts and Techniques 49 Outline What is classification? Issues regarding classification Classification by decision tree induction Bayesian classification Lazy learners (or learning from your neighbors) Model Evaluation and Selection December 13, 2012 Data Mining: Concepts and Techniques 50 Lazy vs. Eager Learning Lazy vs. eager learning Lazy learning (e.g., instance-based learning): Simply stores training data (or only minor processing) and waits until it is given a test tuple Eager learning (the above discussed methods): Given a set of training set, constructs a classification model before receiving new (e.g., test) data to classify Lazy: less time in training but more time in predicting Accuracy Lazy method effectively uses a richer hypothesis space since it uses many local linear functions to form its implicit global approximation to the target function Eager: must commit to a single hypothesis that covers the entire instance space December 13, 2012 Data Mining: Concepts and Techniques 51 Lazy Learner: Instance-Based Methods Instance-based learning: Store training examples and delay the processing (“lazy evaluation”) until a new instance must be classified Typical approaches k-nearest neighbor approach Instances represented as points in a Euclidean space. Locally weighted regression Constructs local approximation Case-based reasoning Uses symbolic representations and knowledgebased inference December 13, 2012 Data Mining: Concepts and Techniques 52 The k-Nearest Neighbor Algorithm All instances correspond to points in the n-D space The nearest neighbor are defined in terms of Euclidean distance, dist(X1, X2) Target function could be discrete- or real- valued For discrete-valued, k-NN returns the most common value among the k training examples nearest to xq Vonoroi diagram: the decision surface induced by 1NN for a typical set of training examples _ _ _ + _ _ December 13, 2012 . + + xq . _ + . . Data Mining: Concepts and Techniques . . 53 Discussion on the k-NN Algorithm k-NN for real-valued prediction for a given unknown tuple Returns the mean values of the k nearest neighbors Distance-weighted nearest neighbor algorithm Weight the contribution of each of the k neighbors according to their distance to the query xq Give greater weight to closer neighbors Robust to noisy data by averaging k-nearest neighbors Curse of dimensionality: distance between neighbors could be dominated by irrelevant attributes To overcome it, axes stretch or elimination of the least relevant attributes December 13, 2012 Data Mining: Concepts and Techniques 54 Outline What is classification? Issues regarding classification Classification by decision tree induction Bayesian classification Lazy learners (or learning from your neighbors) Model Evaluation December 13, 2012 Data Mining: Concepts and Techniques 55 Model Evaluation Evalua&on metrics: How can we measure accuracy? Other metrics to consider? Use test set of class‐labeled tuples instead of training set when assessing accuracy Methods for es&ma&ng a classifier’s accuracy: Holdout method, random subsampling Cross‐valida&on Bootstrap 56 Classifier Evaluation Metrics: Confusion Matrix Confusion Matrix: Actual class\Predicted class C1 ¬ C1 C1 True Posi;ves (TP) False Nega;ves (FN) ¬ C1 False Posi;ves (FP) True Nega;ves (TN) Example of Confusion Matrix: Actual class\Predicted buy_computer buy_computer class = yes = no Total buy_computer = yes 6954 46 7000 buy_computer = no 412 2588 3000 Total 7366 2634 10000 Given m classes, an entry, CMi,j in a confusion matrix indicates # of tuples in class i that were labeled by the classifier as class j May have extra rows/columns to provide totals 57 Classifier Evaluation Metrics: Accuracy, Error Rate, Sensitivity and Specificity A\P C ¬C Class Imbalance Problem: C TP FN P One class may be rare, e.g. ¬C FP TN N fraud, or HIV‐posi&ve P’ N’ All Significant majority of the nega3ve class and minority of Classifier Accuracy, or the posi&ve class recogni&on rate: percentage of test set tuples that are correctly Sensi;vity: True Posi&ve classified recogni&on rate Accuracy = (TP + TN)/All Sensi;vity = TP/P Error rate: 1 – accuracy, or Specificity: True Nega&ve recogni&on rate Error rate = (FP + FN)/All Specificity = TN/N 58 Classifier Evaluation Metrics: Precision and Recall, and F-measures Precision: exactness – what % of tuples that the classifier labeled as posi&ve are actually posi&ve Recall: completeness – what % of posi&ve tuples did the classifier label as posi&ve? Perfect score is 1.0 Inverse rela&onship between precision & recall F measure (F1 or F‐score): harmonic mean of precision and recall, Fß: weighted measure of precision and recall assigns ß &mes as much weight to recall as to precision 59 Classifier Evaluation Metrics: Example Actual Class\Predicted class cancer = yes cancer = no Total Recogni&on(%) cancer = yes 90 210 300 30.00 (sensi3vity cancer = no 140 9560 9700 98.56 (specificity) Total 230 9770 10000 96.40 (accuracy) Precision = 90/230 = 39.13% Recall = 90/300 = 30.00% 60 Evaluating Classifier Accuracy: Holdout & Cross-Validation Methods Holdout method Given data is randomly par&&oned into two independent sets Training set (e.g., 2/3) for model construc&on Test set (e.g., 1/3) for accuracy es&ma&on Random sampling: a varia&on of holdout Repeat holdout k &mes, accuracy = avg. of the accuracies obtained Cross‐valida;on (k‐fold, where k = 10 is most popular) Randomly par&&on the data into k mutually exclusive subsets, each approximately equal size At i‐th itera&on, use Di as test set and others as training set Leave‐one‐out: k folds where k = # of tuples, for small sized data *Stra;fied cross‐valida;on*: folds are stra&fied so that class dist. in each fold is approx. the same as that in the ini&al data 61 Evaluating Classifier Accuracy: Bootstrap Bootstrap Works well with small data sets Samples the given training tuples uniformly with replacement i.e., each &me a tuple is selected, it is equally likely to be selected again and re‐added to the training set Several bootstrap methods, and a common one is .632 boostrap A data set with d tuples is sampled d &mes, with replacement, resul&ng in a training set of d samples. The data tuples that did not make it into the training set end up forming the test set. About 63.2% of the original data end up in the bootstrap, and the remaining 36.8% form the test set (since (1 – 1/d)d ≈ e‐1 = 0.368) Repeat the sampling procedure k &mes, overall accuracy of the model: 62 Reference J. Han and M. Kamber. Data Mining: Concepts and Techniques. Morgan Kaufmann, 2nd ed., 2006 – CHAPTER 6 (3RD edition, 2011 – CHAPTERS 8 AND 9) http://www.cs.uiuc.edu/homes/hanj/bk2/ December 13, 2012 Data Mining: Concepts and Techniques 63