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ISSN: 1690-4524
Indexed in EBSCO

Editorial Advisory Board's Chair
William Lesso

Editor-in-Chief
Nagib C. Callaos


Sponsored by:
International Institute of Informatics and Systemics
Published by:
International Institute of Informatics and Cybernetics

 

Editorial Advisory Board

Journal's Reviewers
 

Description and Aims

Areas and Subareas

Information to Contributors


Adapting to Student Learning Styles: Using Cell Phone Technology in Undergraduate Science Instruction
Richard Pennington, Julia Paredes, Mai Yin Tsoi, Candace Timpte, Deborah Sauder, David Pursell
(pages: 1-5)

A Novel Control Algorithm for Integration of Active and Passive Vehicle Safety Systems in Frontal Collisions
Daniel Wallner, Arno Eichberger, Wolfgang Hirschberg
(pages: 6-11)

Investigation of a new low cost and low consumption single poly-silicon memory
Patrick Calenzo, Jean-René Raguet, Romain Laffont, Rachid Bouchakour, Philippe Boivin, Pascal Fornara, Stephan Niel
(pages: 12-16)

Linking Cognition to Cognitive Dissonance through Scientific Discrepant Events
Allen G. Rauch, Marjorie S. Schiering
(pages: 17-21)

Using Informatics to Create a New Triangular Array of e-Assessment Tools through an International Synergy between Education and Business
Gary R. Tucker, Tina Powers, Scott E. Hamm
(pages: 22-27)

Proposal of interference reduction routing for ad-hoc networks
Katsuhiro Naito, Kazuo Mori, Hideo Kobayashi
(pages: 28-33)

Scheduling real-time indivisible loads with special resource allocation requirements on cluster computing
Abeer Hamdy
(pages: 34-39)

Realistic Measurement of Student Attendance in LMS Using Biometrics
Elisardo González-Agulla, Jose L. Alba-Castro, Enrique Argones-Rúa, Luis Anido-Rifón
(pages: 40-42)

The Virtual Forest: Robotics And Simulation Technology As The Basis For New Approaches To The Biological And The Technical Production In The Forest
J. Rossmann, M. Schluse, Christian Schlette
(pages: 43-48)

New Evaluation Techniques of Hyperspectral Data
Veronika Kozma-Bognár, József Berke
(pages: 49-53)

Diversity Measures and Coarse-graining in Data Analysis with an Application Involving Plant Species on the Gal´apagos Islands
Radu Cornel Guiasu, Silviu Guiasu
(pages: 54-64)

Organizational Institutions and Their Responsible Behavioral-Cultural Gene Codes and A Measurement for Organizational Efficiency
Jason Jixuan
(pages: 65-70)

On the expanded information contents for the YUBITSUKIYI system and the Dementia situation taking account of Fuzzy concept of Markov’s information source
Masahiro Aruga, Kiyotaka Takagi, Shuichi Kato
(pages: 71-76)

Academic Globalization: Universality of Cross-Cultural And Cross-Disciplinary LMR Perspectives
Marta Szabo White
(pages: 77-82)


 

Abstracts

 


ABSTRACT


Portable Rule Extraction Method for Neural Network Decisions Reasoning

Darius PLIKYNAS, Leonas SIMANAUSKAS, Ausra Rasteniene


Neural network (NN) methods are sometimes useless in practical applications, because they are not properly tailored to the particular market’s needs. We focus thereinafter specifically on financial market applications. NNs have not gained full acceptance here yet. One of the main reasons is the “Black Box” problem (lack of the NN decisions explanatory power). There are though some NN decisions rule extraction methods like decompositional, pedagogical or eclectic, but they suffer from low portability of the rule extraction technique across various neural net architectures, high level of granularity, algorithmic sophistication of the rule extraction technique etc. The authors propose to eliminate some known drawbacks using an innovative extension of the pedagogical approach. The idea is exposed by the use of a widespread MLP neural net (as a common tool in the financial problems’ domain) and SOM (input data space clusterization). The feedback of both nets’ performance is related and targeted through the iteration cycle by achievement of the best matching between the decision space fragments and input data space clusters. Three sets of rules are generated algorithmically or by fuzzy membership functions. Empirical validation of the common financial benchmark problems is conducted with an appropriately prepared software solution.



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