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Algorithms: The Basic Methods Witten – Chapter 4 Charles Tappert Professor of Computer Science School of CSIS, Pace University.

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Presentation on theme: "Algorithms: The Basic Methods Witten – Chapter 4 Charles Tappert Professor of Computer Science School of CSIS, Pace University."— Presentation transcript:

1 Algorithms: The Basic Methods Witten – Chapter 4 Charles Tappert Professor of Computer Science School of CSIS, Pace University

2 1. Inferring Rudimentary Rules 1R (1-rule) Method This method tests a single attribute and creates a rule that assigns the most frequent class to that attribute

3 2. Statistical Modeling Naïve Bayes Method Assumes statistical independence – multiply probabilities

4 2. Statistical Modeling Naïve Bayes Method

5 3. Divide-and-Conquer: Construct Decision Trees: ID3 Method

6

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8 Compare: Example from Naïve Bayes Method

9 4. Covering Algorithms: Constructing Rules

10 5. Mining Association Rules

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12 6. Linear Models Prediction by linear regression

13 6. Linear Models Linear Classification via Perceptron

14 Non-parametric algorithm 7. Instance-Based Learning k-nearest-neighbor method

15 8. Clustering: k-means Technique Top down method Specify in advance number of clusters, k Randomly choose k seed points Find the closest points to the seed points Compute the means of points closest to each seed point –> seeds for next iteration Stop when the seed points become stable

16 8. Clustering: k-means Technique Top down method

17 Clustering: Hierarchy - Dendrogram Bottom up method Also, see Witten p 81, p 275-278 Mary Manfredi dissertation


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