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Designing a framework For Recommender system Based on Interactive Evolutionary Computation Date : Mar 20 Sat, 2011 Project Number : 2011-0007561
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CONTENTS 1. Introduction 2. Research Overview 3. Preliminary Experiment 4. Conclusion
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Introduction
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In daily life... I’m wondering which one is BEST for me? It is hard to make decision. Is there any one who help me? Don’t worry! I can help you. Recommender System said... 4
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Recommender System ‣ recognize user’s preference ‣ recommend items that are interesting and useful to user. This System’s Purpose is to 5 iTunes
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Research Overview
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Research Goal ‣ o‣ overcome existing methods’ limitation ‣ guarantee quality of recommendation. The main objective is to Content-Based Filtering CollaborativeFiltering Existing Method Over specialization Sparse Problem & Content-Based Filtering IEC** Proposed Method ** = Interactive Evolutionary Computation 7
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Research Plan There are two separate parts of plan. New Recommendation Method Music Recommender System 1st Period (2011.03.01 ~ 2012.02.28) Consider Improving Points Music Recommender System [Improved] 2nd Period (2012.03.01 ~ 2013.02.28) + A framework for recommender system The Final Goal = ‣ Investigate New recommendation Method (IEC + Content-based filtering) ‣ Validate proposed method ‣ Apply advanced method (e.g., multi-objective concept & genetic programming) ‣ Validate proposed method 8
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Preliminary Experiment
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The experiment is designed based on my previous work [1]. ‣ apply evolutionary approach (i.e., genetic algorithm) ‣ compare my designed system with exiting system [2] 10 ‣ Criteria (To minimize) Average Similarity Value [1] A Recommender System Based on Genetic Algorithm for Music Data, 2010 2nd International Conference on Computer Engineering and Technology, Volume 6, P414-417, 2010 [2] K. Yoshii et al., An efficient hybrid music recommender system using an incrementally trainable probabilistic generative model, Audio, Speech, and Language Processing, IEEE Transactions on 16, 435-447, 2008 References
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Conclusion
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In this research, I propose a new type of recommender system. This research is applicable to various fields as a promising recommendation technology. (e.g., web service, standalone application or mobile device) From experimental result, evolutionary approach can improve the recommendation quality. 12 Content-Based Filtering IEC ‣ By combining interactive evolutionary computation and the content-based filtering method
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Question ?
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Thank You for your attention !!
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