AIMay 27, 2020

An Exploratory Study of Hierarchical Fuzzy Systems Approach in Recommendation System

arXiv:2005.14026v12 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental study for developers of interpretable recommendation systems, focusing on a specific domain.

The paper tackled the curse of dimensionality in fuzzy logic systems for recommendation systems by exploring hierarchical fuzzy systems, finding that HFS improves interpretability in a career path recommendation example.

Recommendation system or also known as a recommender system is a tool to help the user in providing a suggestion of a specific dilemma. Thus, recently, the interest in developing a recommendation system in many fields has increased. Fuzzy Logic system (FLSs) is one of the approaches that can be used to model the recommendation systems as it can deal with uncertainty and imprecise information. However, one of the fundamental issues in FLS is the problem of the curse of dimensionality. That is, the number of rules in FLSs is increasing exponentially with the number of input variables. One effective way to overcome this problem is by using Hierarchical Fuzzy System (HFSs). This paper aims to explore the use of HFSs for Recommendation system. Specifically, we are interested in exploring and comparing the HFS and FLS for the Career path recommendation system (CPRS) based on four key criteria, namely topology, the number of rules, the rules structures and interpretability. The findings suggested that the HFS has advantages over FLS towards improving the interpretability models, in the context of a recommendation system example. This study contributes to providing an insight into the development of interpretable HFSs in the Recommendation systems.

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