Abstract

Approximate reasoning systems facilitate fuzzy inference through activating fuzzy if–then rules in which attribute values are imprecisely described. Fuzzy rule interpolation (FRI) supports such reasoning with sparse rule bases where certain observations may not match any existing fuzzy rules, through manipulation of rules that bear similarity with an unmatched observation. This differs from classical rule-based inference that requires direct pattern matching between observations and the given rules. FRI techniques have been continuously investigated for decades, resulting in various types of approach. Traditionally, it is typically assumed that all antecedent attributes in the rules are of equal significance in deriving the consequents. Recent studies have shown significant interest in developing enhanced FRI mechanisms where the rule antecedent attributes are associated with relative weights, signifying their different importance levels in influencing the generation of the conclusion, thereby improving the interpolation performance. This survey presents a systematic review of both traditional and recently developed FRI methodologies, categorised accordingly into two major groups: FRI with non-weighted rules and FRI with weighted rules. It introduces, and analyses, a range of commonly used representatives chosen from each of the two categories, offering a comprehensive tutorial for this important soft computing approach to rule-based inference. A comparative analysis of different FRI techniques is provided both within each category and between the two, highlighting the main strengths and limitations while applying such FRI mechanisms to different problems. Furthermore, commonly adopted criteria for FRI algorithm evaluation are outlined, and recent developments on weighted FRI methods are presented in a unified pseudo-code form, easing their understanding and facilitating their comparisons.

Highlights

  • Fuzzy set theory (Zadeh 1965) and its extension, fuzzy logic, have been successfully applied for many real-world problems (e.g., Ross 2005; Terano et al 2014; Zimmermann 2011)

  • This paper focuses on the former issue that is performing inference with a sparse rule base

  • This paper aims to provide a comprehensive review of Fuzzy rule interpolation (FRI) techniques that enable approximate reasoning in the context of sparse rule bases, covering both the conventional FRI methods and the recent advances

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Summary

Introduction

Fuzzy set theory (Zadeh 1965) and its extension, fuzzy logic, have been successfully applied for many real-world problems (e.g., Ross 2005; Terano et al 2014; Zimmermann 2011). An approximate reasoning system can be formalized as a fuzzy if– rule-based inference mechanism that derives a conclusion given an input observation. Fuzzy inference rules are a set of rules that associate input and output variables of a given physical system or other phenomenon in determining their relationships, either learned from historical data or directly acquired from domain experts, or a mixture of both. Based on such rules, a fuzzy inference mechanism is encoded to implement the process of approximate reasoning, through manipulation among the fuzzy inference rules in response to any new input data. Fuzzy rule bases are the essential component of any approximate reasoning model, storing knowledge required to inference and determining what computational techniques to use

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