COMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS

Recommendation system is one of the technologies that is continuously being developed for utilization in various domains. Recommendation systems are useful for enhancing user convenience in making decisions. Session-based recommendation system is an emerging paradigm that focuses on learning user...

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Main Author: Nindyaratri, Gratia
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/84265
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:84265
spelling id-itb.:842652024-08-14T20:42:54ZCOMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS Nindyaratri, Gratia Indonesia Final Project recommendation system, session-based recommendation system, LSTM, GRU, attention mechanism INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/84265 Recommendation system is one of the technologies that is continuously being developed for utilization in various domains. Recommendation systems are useful for enhancing user convenience in making decisions. Session-based recommendation system is an emerging paradigm that focuses on learning users' short-term and dynamic preferences. The use of recurrent neural networks (RNN) has become a popular algorithm choice due to its ability to learn sequential data, and attention mechanism is increasingly being utilized alongside RNNs to recognize user intentions within a session. Therefore, the performance of two RNN variants, namely LSTM and GRU, will be analyzed when combined with attention mechanism to perform session-based recommendation tasks. The two developed models will be compared based on recall and mean reciprocal rank (MRR) metrics. Additionally, the performance of both models in handling various types of session data based on session length will also be compared. 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 Recommendation system is one of the technologies that is continuously being developed for utilization in various domains. Recommendation systems are useful for enhancing user convenience in making decisions. Session-based recommendation system is an emerging paradigm that focuses on learning users' short-term and dynamic preferences. The use of recurrent neural networks (RNN) has become a popular algorithm choice due to its ability to learn sequential data, and attention mechanism is increasingly being utilized alongside RNNs to recognize user intentions within a session. Therefore, the performance of two RNN variants, namely LSTM and GRU, will be analyzed when combined with attention mechanism to perform session-based recommendation tasks. The two developed models will be compared based on recall and mean reciprocal rank (MRR) metrics. Additionally, the performance of both models in handling various types of session data based on session length will also be compared.
format Final Project
author Nindyaratri, Gratia
spellingShingle Nindyaratri, Gratia
COMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS
author_facet Nindyaratri, Gratia
author_sort Nindyaratri, Gratia
title COMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS
title_short COMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS
title_full COMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS
title_fullStr COMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS
title_full_unstemmed COMPARATIVE STUDY OF RECURRENT NEURAL NETWORK-BASED ALGORITHMS AND ATTENTION MECHANISM IN SESSION-BASED RECOMMENDATION SYSTEMS
title_sort comparative study of recurrent neural network-based algorithms and attention mechanism in session-based recommendation systems
url https://digilib.itb.ac.id/gdl/view/84265
_version_ 1822998493914988544