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Classification II.

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Presentation on theme: "Classification II."— Presentation transcript:

1 Classification II

2 Data Mining Overview Data Mining
Data warehouses and OLAP (On Line Analytical Processing.) Association Rules Mining Clustering: Hierarchical and Partitional approaches Classification: Decision Trees and Bayesian classifiers

3 Setting Given old data about customers and payments, predict new applicant’s loan eligibility. Previous customers Classifier Decision rules Age Salary Profession Location Customer type Salary > 5 L Good/ bad Prof. = Exec New applicant’s data

4 Decision trees Tree where internal nodes are simple decision rules on one or more attributes and leaf nodes are predicted class labels. Salary < 1 M Prof = teaching Age < 30 Good Bad Bad Good

5 SLIQ (Supervised Learning In Quest)
Decision-tree classifier for data mining Design goals: Able to handle large disk-resident training sets No restrictions on training-set size

6 Building tree GrowTree(TrainingData D) Partition(D); Partition(Data D)
if (all points in D belong to the same class) then return; for each attribute A do evaluate splits on attribute A; use best split found to partition D into D1 and D2; Partition(D1); Partition(D2); 2 major problems: o How to find split points that define node tests o How to partition the data having found split points o CART, C4.5: - DFS - Repeated sorting at each node (continuous attributes) o SLIQ - SortOnce technique using attribute lists

7 Data Setup One list for each attribute
Entries in an Attribute List consist of: attribute value class list index A list for the classes with pointers to the tree nodes Lists for continuous attributes are in sorted order Attribute lists may be disk-resident Class List must be in main memory

8 Data Setup Class list Attribute lists N1

9 Evaluating Split Points
Gini Index if data D contains examples from c classes Gini(D) = 1 -  pj2 where pj is the relative frequency of class j in D If D split into D1 & D2 with n1 & n2 tuples each Ginisplit(D) = n1* gini(D1) + n2* gini(D2) n n Note: Only class frequencies are needed to compute index

10 Finding Split Points For each attribute A do
evaluate splits on attribute A using attribute list Key idea: To evaluate a split on numerical attributes we need to sort the set at each node. But, if we have all attributes pre-sorted we don’t need to do that at the tree construction phase Keep split with lowest GINI index 2 major problems: o How to find split points that define node tests o How to partition the data having found split points o CART, C4.5: - DFS - Repeated sorting at each node (continuous attributes) o SLIQ - SortOnce technique using attribute lists

11 Finding Split Points: Continuous Attrib.
Consider splits of form: value(A) < x Example: Age < 17 Evaluate this split-form for every value in an attribute list To evaluate splits on attribute A for a given tree-node: Initialize class-histograms of left and right children; for each record in the attribute list do find the corresponding entry in Class List and the class and Leaf node evaluate splitting index for value(A) < record.value; update the class histogram in the leaf

12 N1 GINI Index: und 0.33 0.22 0.5 High Low L R 4 2 1 High Low L 1 R 3 2
R 4 2 und 1 High Low L 1 R 3 2 0.33 3 1 4 High Low L 3 R 1 2 3 0.22 1: Age < 20 3: Age < 32 Age < 32 High Low L 3 1 R 4: Age < 43 0.5 4

13 Finding Split Points: Categorical Attrib.
Consider splits of the form: value(A)  {x1, x2, ..., xn} Example: CarType {family, sports} Evaluate this split-form for subsets of domain(A) To evaluate splits on attribute A for a given tree node: initialize class/value matrix of node to zeroes; for each record in the attribute list do increment appropriate count in matrix; evaluate splitting index for various subsets using the constructed matrix;

14 class/value matrix Left Child Right Child GINI Index:
CarType in {family} GINI = 0.444 CarType in {sports} GINI = 0.333 CarType in {truck} GINI = 0.267

15 Updating the Class List
Next step is to update the Class List with the new nodes Scan the attr list that is used to split and update the corresponding leaf entry in the Class List For each attribute A in a split traverse the attribute list for each value u in the attr list find the corresponding entry in the class list (e) find the new class c to which u belongs update the class list for e to c update node reference in e to the node corresponding to class c

16 Preventing overfitting
A tree T overfits if there is another tree T’ that gives higher error on the training data yet gives lower error on unseen data. An overfitted tree does not generalize to unseen instances. Happens when data contains noise or irrelevant attributes and training size is small. Overfitting can reduce accuracy drastically: 10-25% as reported in Minger’s 1989 Machine learning

17 Approaches to prevent overfitting
Two Approaches: Stop growing the tree beyond a certain point First over-fit, then post prune. (More widely used) Tree building divided into phases: Growth phase Prune phase Hard to decide when to stop growing the tree, so second appraoch more widely used.

18 Criteria for finding correct final tree size:
Three criteria: Cross validation with separate test data Use some criteria function to choose best size Example: Minimum description length (MDL) criteria Statistical bounds: use all data for training but apply statistical test to decide right size.

19 The minimum description length principle (MDL)
MDL: paradigm for statistical estimation particularly model selection Given data D and a class of models M, our choose is to choose a model m in M such that data and model can be encoded using the smallest total length L(D) = L(D|m) + L(m) How to find encoding length? Answer in Information Theory Consider the problem of transmitting n messages where pi is probability of seeing message i Shannon’s theorem: minimum expected length when -log pi bits to message i

20 Encoding data Assume t records of training data D
First send tree m using L(m|M) bits Assume all but the class labels of training data known. Goal: transmit class labels using L(D|m) If tree correctly predicts an instance, 0 bits Otherwise, log k bits where k is number of classes. Thus, if e errors on training data: total cost e log k + L(m|M) bits. Complex tree will have higher L(m|M) but lower e. Question: how to encode the tree?

21 Extracting Classification Rules from Trees
Represent the knowledge in the form of IF-THEN rules One rule is created for each path from the root to a leaf Each attribute-value pair along a path forms a conjunction The leaf node holds the class prediction Rules are easier for humans to understand Example IF age = “<=30” AND student = “no” THEN buys_computer = “no” IF age = “<=30” AND student = “yes” THEN buys_computer = “yes” IF age = “31…40” THEN buys_computer = “yes” IF age = “>40” AND credit_rating = “excellent” THEN buys_computer = “yes” IF age = “<=30” AND credit_rating = “fair” THEN buys_computer = “no”

22 SPRINT An improvement over SLIQ
Does not need to keep a list in main memory Parallel version is straightforward Attribute lists are extended with class field – no Class list is needed Uses hashing to assign records to classes and nodes

23 Pros and Cons of decision trees
Reasonable training time Fast application Easy to interpret Easy to implement Can handle large number of features Cons Cannot handle complicated relationship between features simple decision boundaries problems with lots of missing data More information:


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