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Dimensionality Reduction in Unsupervised Learning of Conditional Gaussian Networks Authors: Pegna, J.M., Lozano, J.A., Larragnaga, P., and Inza, I. In.

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Presentation on theme: "Dimensionality Reduction in Unsupervised Learning of Conditional Gaussian Networks Authors: Pegna, J.M., Lozano, J.A., Larragnaga, P., and Inza, I. In."— Presentation transcript:

1 Dimensionality Reduction in Unsupervised Learning of Conditional Gaussian Networks Authors: Pegna, J.M., Lozano, J.A., Larragnaga, P., and Inza, I. In IEEE Trans. on PAMI, 23(6), 2001. Summarized by Kyu-Baek Hwang

2 Abstract Feature selection for unsupervised learning of Gaussian networks  Unsupervised learning for Bayesian networks?  Which feature is good for the learning task? Assessment of the relevance of the feature for learning process  How to determine the threshold for cutting? Accelerate the learning time and still obtain reasonable models  Two artificial datasets  Two benchmark datasets from the UCI repository

3 Unsupervised Learning for Conditional Gaussian Networks Data clustering  learning the probabilistic graphical model from the unlabeled data Cluster membership  a hidden variable Conditional Gaussian networks  Cluster variable is the ancestor for all the other variables.  The joint probability distribution over all the other variables given the cluster membership is multivariate Gaussian. Feature selection in classification  feature selection in clustering  Consider all the features eventually, to describe the domain.

4 Conditional Gaussian Distribution Data clustering  X = (Y, C) = (Y 1, …, Y n, C) Conditional Gaussian distribution  Pdf for Y given C = c is,  whenever p(c) = p(C = c) > 0 Positive definite

5 Conditional Gaussian Networks Factorization of the conditional Gaussian distribution  Conditional independencies among all the variables is encoded by the network structure s.  Local probability distribution

6 An Example of CGNs C

7 Learning CGNs from Data Incomplete dataset d Structural EM algorithm OH n1 N

8 Structural EM Algorithm Expected score Relaxed version:

9 Scoring Metrics for the Structural Search The log marginal likelihood of the expected complete data

10 Feature Selection Large databases  Many instances  Many attributes   Dimensionality reduction required Select features based on some criterion.  The criterion differs from the purpose of learning.  Learning speed, accurate predictions, and the comprehensibility of the learned models Non exhaustive search (2 n )  Sequential selection (forward or backward)  Evolutionary, population-based, randomized search based on the EDA.

11 Wrapper and Filter Wrapper  Feature subsets tailored to the performance function of learning process  Predictive accuracy on the test data set. Filter  Based on the intrinsic properties of the data set.  Correlation between the class label and each attribute  Supervised learning Two problems in unsupervised learning  Absence of the class label  different criterion for the feature selection  No standard accepted performance task  multiple predictive accuracy or class prediction

12 Feature Selection in Learning CGNs Data analysis (clustering)  description, not prediction  All the features are necessary for the description. CGN learning with many features is a time-consuming task.  Preprocessing: feature selection  Learning CGNs  Postprocessing: addition of the other features as conditionally independent given the cluster membership The goal  how to measure the relevance  Fast learning time  Accuracy  log likelihood for the test data

13 Relevance Those features that exhibit low correlation with the rest of the features can be considered irrelevant for the learning process.  Conditionally independent given the cluster membership. First trial in the continuous domain

14 Relevance Measure The relevance measure:  Null hypothesis (edge exclusion test) r 2 ij|rest  The sample partial correlation of Y i and Y j  The maximum likelihood estimates (mles) of the elements of the inverse variance matrix

15 Graphical Gaussian Models (1/2)

16 Graphical Gaussian Models (2/2)

17 Relevance Threshold Distribution of the test statistic  G  (x): pdf of a  1 2 random variable  5 percent test  The resolution of the above equation  optimization

18 Learning Scheme

19 Experimental Settings Model speicifications  Tree augmented Naïve Bayes (TANB) models  Predictive attributes may have, at most, one other predictive attribute as a parent. An example C

20 Data Sets Synthetic data sets (4000:1000)  TANB model with 25 (15:14[-1, 1]) attributes, (0, 4, 8), 1  C: uniform, (0, 1)  TANB model with 30 (15:14[-1, 1]) attributes, (0, 4, 8), 2  C: uniform, (0, 5) Waveform (artificial data) (4000:1000)  3 clusters, 40 attributes, the last 19 are noise attributes Pima  768 cases (700:68)  8 attributes

21 Performance Criteria The log marginal likelihood of the training data The multiple predictive accuracy  A probabilistic approach to the standard multiple predictive accuracy Runtime  10 independent runs for the synthetic data sets and the waveform data  50 independent runs for the pima data  On a Pentium 366 machine

22 Relevance Ranking

23 Likelihood Plots for Synthetic Data

24 Likelihood Plots for Real Data

25 Runtime

26 Automatic Dimensionality Reduction

27 Conclusions and Future Work Relevance assessment for feature selection in unsupervised learning and continuous domain Reasonable learning performance Extension to categorical domain Redundant feature problem Relaxation of the model structure More realistic data set


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