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Journal ArticleDOI

Unsupervised learning techniques for fine-tuning fuzzy cognitive map causal links

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TLDR
Two unsupervised learning algorithms are presented and compared for training FCMs; how they define, select or fine-tuning weights of the causal interconnections among concepts are presented.
Abstract
Fuzzy Cognitive Maps (FCMs) constitute an attractive knowledge-based methodology, combining the robust properties of fuzzy logic and neural networks. FCMs represent causal knowledge as a signed directed graph with feedback and provide an intuitive framework which incorporates the experts' knowledge. FCMs handle available information and knowledge from an abstract point of view. They develop behavioural model of the system exploiting the experience and knowledge of experts. The construction of FCMs is based mainly on experts who determine the structure of FCM, i.e. concepts and weighted interconnections among concepts. But this methodology may not be a sufficient model of the system because the human factor is not always reliable. Thus the FCM model of the system may requires restructuring which is achieved through adjustment the weights of FCM interconnections using specific learning algorithms for FCMs. In this article, two unsupervised learning algorithms are presented and compared for training FCMs; how they define, select or fine-tuning weights of the causal interconnections among concepts. The implementation and results of these unsupervised learning techniques for an industrial process control problem are discussed. The simulations results of training the process system verify the effectiveness, validity and advantageous characteristics of those learning techniques for FCMs.

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Citations
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Journal ArticleDOI

A Review of Fuzzy Cognitive Maps Research During the Last Decade

TL;DR: This survey makes a review of the most recent applications and trends on fuzzy cognitive maps (FCMs) over the past decade, and summarizes the current state of knowledge of the topic of FCMs.
Journal ArticleDOI

Benchmarking main activation functions in fuzzy cognitive maps

TL;DR: Findings show how the sigmoid function offers significantly greater advantages than the other functions in a same decisional model.
Journal ArticleDOI

Learning Algorithms for Fuzzy Cognitive Maps—A Review Study

TL;DR: A survey on recent advances on learning methodologies and algorithms for FCMs that present their dynamic capabilities and application characteristics in diverse scientific fields is established.
Journal ArticleDOI

Brain tumor characterization using the soft computing technique of fuzzy cognitive maps

TL;DR: The main advantage of the proposed FCM grading model is the sufficient interpretability and transparency in decision process, which make it a convenient consulting tool in characterizing tumor aggressiveness for every day clinical practice.
Book ChapterDOI

Fuzzy Cognitive Maps: Basic Theories and Their Application to Complex Systems

TL;DR: The challenging problem of modeling and controlling complex systems is investigated using Fuzzy Cognitive Maps (FCMs), and a successful application of FCM theory in a health problem is provided.
References
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Book

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TL;DR: In this paper, the authors discuss the first stage of perception: growth of the assembly, the phase sequence, and the problem of Motivational Drift, which is the line of attack.

Lecture Notes in Artificial Intelligence

P. Brezillon, +1 more
TL;DR: The topics in LNAI include automated reasoning, automated programming, algorithms, knowledge representation, agent-based systems, intelligent systems, expert systems, machine learning, natural-language processing, machine vision, robotics, search systems, knowledge discovery, data mining, and related programming languages.
Journal ArticleDOI

Fuzzy cognitive maps

TL;DR: A fuzzy causal algebra for governing causal propagation on FCMs is developed and it allows knowledge bases to be grown by connecting different FCMs.
Book

Artificial Neural Networks

TL;DR: artificial neural networks, artificial neural networks , مرکز فناوری اطلاعات و اصاع رسانی, کδاوρزی
Book

Fundamentals of artificial neural networks

TL;DR: In this article, the authors provide a systematic account of artificial neural network paradigms by identifying the fundamental concepts and major methodologies underlying most of the current theory and practice employed by neural network researchers.