Journal of Advanced Computational Intelligence and Intelligent Informatics Vol.12, No.5, 2008

Editorial:
Modeling Decisions for Artificial Intelligence
Vicenç Torra and Yasuo Narukawa, pp. 408-408


In August 2007, the 4th International Conference on Modeling Decisions for Artificial Intelligence (MDAI1) was held in Kitakyushu, Japan. This special issue has its origins in the conference.
We present nine papers related to soft computing tool applications. The first paper, by Honda and Okazaki, presents an axiomatization of a generalized Shaply value. The second paper, by García-Lapresta, also related to decision-making, introduces a multistage decision procedure in which decision-makers opinions are weighted by their contribution to an agreement. The third paper, by Torra and Miyamoto, concerns the problem of loading a container, outlining a system for loading nonorthogonal objects. The fourth paper, by Sakai, Koba, and Nakata, is devoted to rule generation based on rough sets. The fifth paper by Hiramatsu, Huynh, and Nakamori, deals with a fuzzy-based model applied to weather information. The sixth paper, by Inokuchi and Miyamoto, discuss fuzzy clustering algorithms for discrete data. The seventh paper, by Miyamoto, Kuroda, and Arai, studies an algorithm for the sequential extraction of clusters compared to mountain clustering. In the eighth paper, Miyamoto formulates fuzzy clustering using the calculus of variations. The ningth and final paper treats fuzzy clustering, in which Endo et al. discuss fuzzy c-means for data with tolerance.
In closing, we thank the referees for their work on reviews and Prof. Hirota for editing this special issue. We also thank the Fuji Technology Press Ltd. staff for its advice.




1Work partially funded by Spanish MEC (projects ARES – CONSOLIDER INGENIO 2010 CSD2007-00004 – and eAEGIS – TSI2007-65406-C03-02)
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Paper:
Axiomatization of Shapley Values of Fagle and Kern Type on Set Systems
Aoi Honda and Yoshiaki Okazaki, pp. 409-415
Abstract
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Paper:
Favoring Consensus and Penalizing Disagreement in Group Decision Making
José Luis García-Lapresta, pp. 416-421
Abstract
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Paper:
Container Loading for Nonorthogonal Objects: Detecting Collisions
Vicenç Torra and Sadaaki Miyamoto, pp. 422-425
Abstract
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Paper:
Rough Sets Based Rule Generation from Data with Categorical and Numerical Values
Hiroshi Sakai, Kazuhiro Koba, and Michinori Nakata, pp. 426-434
Abstract
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Paper:
A Behavioral Decision Model Based on Fuzzy Targets in Decision Making Using Weather Information
Akio Hiramatsu, Van-Nam Huynh, and Yoshiteru Nakamori, pp. 435-442
Abstract
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Paper:
Fuzzy c-Means Algorithms Using Kullback-Leibler Divergence and Helliger Distance Based on Multinomial Manifold
Ryo Inokuchi and Sadaaki Miyamoto, pp. 443-447
Abstract
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Paper:
Algorithms for Sequential Extraction of Clusters by Possibilistic Method and Comparison with Mountain Clustering
Sadaaki Miyamoto, Youhei Kuroda, and Kenta Arai, pp. 448-453
Abstract
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Paper:
Formulation of Fuzzy c{}-Means Clustering Using Calculus of Variations and Twofold Membership Clusters
Sadaaki Miyamoto, pp. 454-460
Abstract
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Paper:
Fuzzy c{}-Means for Data with Rectangular Maximum Tolerance Range
Yasunori Endo, Yasushi Hasegawa, Yukihiro Hamasuna, and Sadaaki Miyamoto, pp. 461-466
Abstract
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Paper:
Time Related Association Rules Mining with Attributes Accumulation Mechanism and its Application to Traffic Prediction
Huiyu Zhou, Wei Wei, Kaoru Shimada, Shingo Mabu, and Kotaro Hirasawa, pp. 467-478
Abstract
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Paper:
An Evolutionary Hybrid Scheduling Algorithm for Computational Grids
Shajulin Benedict, Rejitha R. S, and V. Vasudevan, pp. 479-484
Abstract
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