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Incorporating Semantic Item Representations to Soften the Cold Start Problem

Published: 16 October 2018 Publication History

Abstract

Recommender systems have been extensively used to provide meaningful and personalized content to users. A recurring issue, especially in collaborative filtering methods, is the cold-start problem, which can be related to new items or new users. This problem can be smoothed by aggregating item information into the recommender calculation, thus the semantics behind these items representations are important. In this paper, we propose four rich item representations, based on three kinds of semantics: sentiment analysis, sense embeddings and similarities. The items' features are disambiguated concepts extracted from textual users' reviews, which are known for possessing a great information load with both item descriptions and user preferences. We apply these four representations in two classic collaborative filtering algorithms, which were adapted to be attribute aware. We compare our approach against the original recommenders, and evaluate our results in two very different datasets to show the generality of our approach. Results show a very positive influence of the item representations to reduce prediction error.

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Cited By

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  • (2022)Extended recommendation-by-explanationUser Modeling and User-Adapted Interaction10.1007/s11257-021-09317-432:1-2(91-131)Online publication date: 7-Mar-2022
  • (2019)A personalized clustering-based approach using open linked data for search space reduction in recommender systemsProceedings of the 25th Brazillian Symposium on Multimedia and the Web10.1145/3323503.3349543(409-416)Online publication date: 29-Oct-2019

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  1. Incorporating Semantic Item Representations to Soften the Cold Start Problem

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      cover image ACM Other conferences
      WebMedia '18: Proceedings of the 24th Brazilian Symposium on Multimedia and the Web
      October 2018
      437 pages
      ISBN:9781450358675
      DOI:10.1145/3243082
      Permission to make digital or hard copies of all or part of this work for personal or classroom use is granted without fee provided that copies are not made or distributed for profit or commercial advantage and that copies bear this notice and the full citation on the first page. Copyrights for components of this work owned by others than ACM must be honored. Abstracting with credit is permitted. To copy otherwise, or republish, to post on servers or to redistribute to lists, requires prior specific permission and/or a fee. Request permissions from [email protected]

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      Published: 16 October 2018

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      Author Tags

      1. Item representation
      2. Recommender systems
      3. cold-start

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      WebMedia '18
      WebMedia '18: Brazilian Symposium on Multimedia and the Web
      October 16 - 19, 2018
      BA, Salvador, Brazil

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      WebMedia '18 Paper Acceptance Rate 37 of 111 submissions, 33%;
      Overall Acceptance Rate 270 of 873 submissions, 31%

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      View all
      • (2022)Extended recommendation-by-explanationUser Modeling and User-Adapted Interaction10.1007/s11257-021-09317-432:1-2(91-131)Online publication date: 7-Mar-2022
      • (2019)A personalized clustering-based approach using open linked data for search space reduction in recommender systemsProceedings of the 25th Brazillian Symposium on Multimedia and the Web10.1145/3323503.3349543(409-416)Online publication date: 29-Oct-2019

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