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Published bySarah Parsons Modified over 9 years ago
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Alex Larson ECE 539 Fall 2013
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Reasons to Predict & Goal Movies are a large part of today’s culture Movies are expensive to make Goal: To predict a movie potential box office success based on its characteristics
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Data Collection Movie statistics available online on various websites Random samples of top movies from recent years Sample data from the-numbers.com
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Features and Classes Release Month Distributor Genre MPAA Rating (G, PG, etc…) Is Sequel? (Y/N) 3 Classes based on Gross in release Year Gross < $49,000,000 $49,000,000 < Gross < $91,000,000 $91,000,00 < Gross
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Results So far Initial results: poor low classification rate Reevaluated data Removed various outliers Limit to top Distributors/Studios Simplified genre classification
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Results So Far KNN Classifier Testing Data200820092010201120122013Average C Rate(%)48645256323648 Confusion Matrix 31127 241412 15827 Maximum Likelihood Classifier Testing Data200820092010201120122013Average C Rate(%)48565256482447.3 Confusion Matrix 34106 251015 111227 Confusion Matrix 231413 151817 13829 MLP back propagation Testing Data200820092010201120122013Average C Rate(%)5248 52404447.3
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Results So far Correctly Predicted for 2013: Iron Man 3 Hunger Games Oblivion Incorrectly Predicted for 2013: Gravity After Earth The Internship
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Possible Improvements Refine features more, add more features like budge, director, lead actors Try with different combination of features
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