Highly Relevant Routing Recommendation Systems for Handling Few Data Using MDL Principle and Embedded Relevance Boosting Factors

Diyah Puspitaningrum, I. S. W. B. Prasetya, P. A. Wicaksono

    Research output: Working paperPreprintAcademic

    Abstract

    A route recommendation system can provide better recommendation if it also takes collected user reviews into account, e.g. places that generally get positive reviews may be preferred. However, to classify sentiment, many classification algorithms existing today suffer in handling small data items such as short written reviews. In this paper we propose a model for a strongly relevant route recommendation system that is based on an MDL-based (Minimum Description Length) sentiment classification and show that such a system is capable of handling small data items (short user reviews). Another highlight of the model is the inclusion of a set of boosting factors in the relevance calculation to improve the relevance in any recommendation system that implements the model.
    Original languageEnglish
    DOIs
    Publication statusPublished - 18 Apr 2018

    Bibliographical note

    ACM SIGIR 2018 Workshop on Learning from Limited or Noisy Data for Information Retrieval (LND4IR'18), July 12, 2018, Ann Arbor, Michigan, USA, 8 pages, 9 figures

    Keywords

    • cs.IR
    • 68U35
    • H.3.3; I.2.6; H.1.2

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