Title
FINGRAMS: Visual Representations of Fuzzy Rule-Based Inference for Expert Analysis of Comprehensibility
Abstract
Since Zadeh’s proposal and Mamdani’s seminal ideas, interpretability is acknowledged as one of the most appreciated and valuable characteristics of fuzzy system identification methodologies. It represents the ability of fuzzy systems to formalize the behavior of a real system in a human understandable way, by means of a set of linguistic variables and rules with a high semantic expressivity close to natural language. Interpretability analysis involves two main points of view: readability of the knowledge base description (regarding complexity of fuzzy partitions and rules) and comprehensibility of the fuzzy system (regarding implicit and explicit semantics embedded in fuzzy partitions and rules, as well as the fuzzy reasoning method). Readability has been thoroughly treated by many authors who have proposed several criteria and metrics. Unfortunately, comprehensibility has usually been neglected because it involves some cognitive aspects related to human reasoning, which are very hard to formalize and to deal with. This paper proposes the creation of a new paradigm for fuzzy system comprehensibility analysis based on fuzzy systems’ inference maps, so-called fuzzy inference-grams (fingrams), by analogy with scientograms used for visualizing the structure of science. Fingrams show graphically the interaction between rules at the inference level in terms of co-fired rules, i.e., rules fired at the same time by a given input. The analysis of fingrams offers many possibilities: measuring the comprehensibility of fuzzy systems, detecting redundancies and/or inconsistencies among fuzzy rules, identifying the most significant rules, etc. Some of these capabilities are explored in this study for the case of fuzzy models and classifiers.
Year
DOI
Venue
2013
10.1109/TFUZZ.2013.2245130
IEEE T. Fuzzy Systems
Keywords
Field
DocType
knowledge based systems,fuzzy set theory
Neuro-fuzzy,Defuzzification,Fuzzy classification,Fuzzy set operations,Artificial intelligence,Adaptive neuro fuzzy inference system,Type-2 fuzzy sets and systems,Fuzzy associative matrix,Mathematics,Machine learning,Fuzzy rule
Journal
Volume
Issue
ISSN
21
6
1063-6706
Citations 
PageRank 
References 
12
0.56
28
Authors
5
Name
Order
Citations
PageRank
David P. Pancho1414.95
José M. Alonso242830.18
Oscar Cordón31572100.75
Arnaud Quirin416813.68
Luis Magdalena5108660.49