PERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM

With the increasing number of internet users now, the use of system for buying and selling online is a very vital requirement. One of the keys to the success of the system for buying and selling online is the recommender system, because it can provide benefits for sellers, and for buyers to make it...

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Main Author: Akbar Faudzan, Fernaldy
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/36816
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:36816
spelling id-itb.:368162019-03-15T10:31:32ZPERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM Akbar Faudzan, Fernaldy Indonesia Theses recommender system; collaborative filtering; hybrid; GRU INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/36816 With the increasing number of internet users now, the use of system for buying and selling online is a very vital requirement. One of the keys to the success of the system for buying and selling online is the recommender system, because it can provide benefits for sellers, and for buyers to make it easier to get relevant items quickly. Collaborative filtering (CF) is the most popular recommendation system method, because it shares interests among users based on ratings so it is more dynamic. Nevertheless, CF still has several issues, such as data sparsity, cold start, gray sheep and dynamic taste. Several studies have tried to accomplish these issues with hybrid method using combination of several techniques. One study tries to accomplish the issues by building method using 7 blocks of hybrid techniques with various approaches. However, method for calculating ratings from reviews on one block in the study has problems with reviews with different length variations. This is because the method uses accumulation of adjectives that make a long gap between the values for short reviews and long reviews. This certainly decreases the overall quality of the recommender system. This study aims to propose another method for rating calculations using gated recurrent unit (GRU). Meanwhile, the new block, demographic filtering (DF) by utilizing user social information will be added to add personalization, especially to new users. Based on the results obtained, the proposed method using GRU as rating calculation provides better results than the method in the previous study, where there is an increase of around 3-5% at the f-measure value. While the addition of new block DF does not give significant positive effect as proposed by the hypothesis. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description With the increasing number of internet users now, the use of system for buying and selling online is a very vital requirement. One of the keys to the success of the system for buying and selling online is the recommender system, because it can provide benefits for sellers, and for buyers to make it easier to get relevant items quickly. Collaborative filtering (CF) is the most popular recommendation system method, because it shares interests among users based on ratings so it is more dynamic. Nevertheless, CF still has several issues, such as data sparsity, cold start, gray sheep and dynamic taste. Several studies have tried to accomplish these issues with hybrid method using combination of several techniques. One study tries to accomplish the issues by building method using 7 blocks of hybrid techniques with various approaches. However, method for calculating ratings from reviews on one block in the study has problems with reviews with different length variations. This is because the method uses accumulation of adjectives that make a long gap between the values for short reviews and long reviews. This certainly decreases the overall quality of the recommender system. This study aims to propose another method for rating calculations using gated recurrent unit (GRU). Meanwhile, the new block, demographic filtering (DF) by utilizing user social information will be added to add personalization, especially to new users. Based on the results obtained, the proposed method using GRU as rating calculation provides better results than the method in the previous study, where there is an increase of around 3-5% at the f-measure value. While the addition of new block DF does not give significant positive effect as proposed by the hypothesis.
format Theses
author Akbar Faudzan, Fernaldy
spellingShingle Akbar Faudzan, Fernaldy
PERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM
author_facet Akbar Faudzan, Fernaldy
author_sort Akbar Faudzan, Fernaldy
title PERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM
title_short PERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM
title_full PERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM
title_fullStr PERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM
title_full_unstemmed PERFORMANCE IMPROVEMENT OF 7 HYBRID BLOCKS METHOD USING GATED RECURRENT UNIT FOR RATING CALCULATION AND DEMOGRAPHIC FILTERING ON RECOMMENDER SYSTEM
title_sort performance improvement of 7 hybrid blocks method using gated recurrent unit for rating calculation and demographic filtering on recommender system
url https://digilib.itb.ac.id/gdl/view/36816
_version_ 1822924721381965824