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PDMC Entry. By Saurabh Amin Dept. of Civil Eng., UT Austin Presenter Nicholas K. Jong Dept. of Computer Sciences, UT Austin. With help of Gunjan Gupta, Dept. of Elect. & Comp. Eng. UT Austin. What was planned. What was done. Bayesian Prior Model for context identification
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PDMC Entry By Saurabh Amin Dept. of Civil Eng., UT Austin Presenter Nicholas K. Jong Dept. of Computer Sciences, UT Austin With help of Gunjan Gupta, Dept. of Elect. & Comp. Eng. UT Austin
What was done Bayesian Prior Model for context identification • Preprocessing • Remove all sessions that have no labeled sub-sessions • Split 70 for training and 30% for testing • Select labeled sub-sessions • Assign class labels: Context1, Context2 , Others • Model Building • Count #(Characteristic 1) for each class label • Fit 3-parameter Weibulls. Size and scale parameters fixed by observation and shape parameter (the most critical one) fixed by observing performance on testing set • Apply Bayes theorem: Pr(Con|Char)=P(Char|Con)*P(Con)/P(Char) • Performance Evaluation • Evaluate performance on scoring criterion (fixed by organizers) • Compare with the most naïve global prior model: Better performance Similar procedure repeated for gender prediction
What is to be done • Feature extraction and classification • Aggregated log-transformed 32-point FFT plot