book

DEEP LEARNING MODEL FOR CATEGORICAL CONTEXT ADAPTATION IN SEQUENCE-AWARE RECOMMENDER SYSTEMS

  • TypePrint
  • CategoryAcademic
  • Sub CategoryPhD Thesis/Thesis
  • StreamComputer Science, Information Technology


A Recommender System (RS), or a Recommendation System is a subclass of information filtering system that seeks to predict the "rating" or "preference" a user would give to an item. Sequence Aware Recommender System (SARS) is a family of RSs that performs recommendation of future sequence of top-k items by finding sequential patterns from the past sequential preference of the users. The majority of research works in this area is focusing on improving the quality by attaining better personalization through context adaptation. 

A RS domain may have multiple contexts (e.g. Time, Day type, Season, Location, Weather, Social environment, user-mood, etc.) and that may be of different categories such as static (e.g. gender, movie type, language, etc.), dynamic(e.g. user- mood, weather, season, etc.) and transitional(e.g. time interval, geographical distance, etc.). The major limitations found in Context adaptive SARS models are the lack of efficiency in modelling multiple contexts with individual attention and the difficulty in modelling each category of contexts separately. The existing models are finding patterns independent of their category. The major limitation found in Point Of Interest RSs is that either they focused only on transition contexts or they treat transition, dynamic and static contexts as common. The influence of each category of contexts on user behaviours are on different way. Each category of contexts needs individual considerations during contextual modelling. They focused only on long-term interests of the user. Short-term interests (user intention) may affect recommendation quality, suppose if we are buying a product for friend as birthday gift, the taste of friends is also having to consider along with our own interests. Most of the models are trained from left to right only i.e., future contexts are not considering while modelling a user sequence. The current behaviour of the user has certain connections with their future actions too.

The specific properties of RNN make them suitable for sequence modelling applications. Gated architectures of RNN includes gating units for controlling information flow over the network and makes it suitable for processing long term sequences. The existing RSs are Gated Recurrent Unit (GRU) based and they are only considering either one context or concatenated every context along with the items in the sequential history of the user when come up with CARSs. The research work is focused on the development of effective GRU based context adaptive SARS models which have the capability to handle multiple contexts with individual contextual attention and category specific contextual attention. Moreover, for improving the quality of recommendation, an attention mechanism to give emphasise on the most recent contexts and a sequential modelling technique with two-way (left-to-right and right-to-left) training approach have been employed.

Buy From
IIP Store ₹ 400
Amazon ₹ 500
Flipkart ₹ 500

**Note: IIP Store is the best place to buy books published by Iterative International Publishers. Price at IIP Store is always less than Amazon, Amazon Kindle, and Flipkart.

Book Title DEEP LEARNING MODEL FOR CATEGORICAL CONTEXT ADAPTATION IN SEQUENCE-AWARE RECOMMENDER SYSTEMS
Author(s) Dr. Kala K. U.M Nandhini
ISBN 978-1-956102-44-4
Book Language ENGLISH
Published Date DECEMBER, 2021
Total Pages 142
Book Size 7x10 Standard
Paper Quality 75 GSM NORMAL PAPER
Book Edition FIRST EDITION

COMMENTS

    No comments found for book with Book title. DEEP LEARNING MODEL FOR CATEGORICAL CONTEXT ADAPTATION IN SEQUENCE-AWARE RECOMMENDER SYSTEMS

LEAVE A Comment

Related Books

MANUAL FOR PYTHON PROGRAMMING LABORATORY(21CSL46) AS PER VTU SYLLABUS
MANUAL FOR PYTH..
  • IIP1177,
  • Print
₹ 160 ₹ 200
Add to cart
BIG DATA AND ANALYTICS WITH CASE STUDIES
BIG DATA AND AN..
  • IIP1179,
  • Print
₹ 319 ₹ 399
Add to cart
UNLOCKING THE POWER OF LANGUAGE: INTEGRATING NLP AND INFORMATION RETRIEVAL FOR EFFECTIVE KNOWLEDGE EXTRACTION
UNLOCKING THE P..
  • IIP1162,
  • Print
₹ 280 ₹ 350
Add to cart
WhatsApp Button