Maximum likelihood hebbian learning based Retrieval method for CBR systems
Juan M. Corchado,Emilio Corchado,Jim Aiken,Colin Fyfe,Florentino Fernandez,Manuel Carlos Jiménez González +5 more
- 23 Jun 2003
- pp 107-121
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TL;DR: A Maximum Likelihood Hebbian Learning-based method that automates the organisation of cases and the retrieval stage of case-based reasoning systems and has been successfully used to completely automate the reasoning process of an oceanographic forecasting system and to improve its performance.
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Abstract: CBR systems are normally used to assist experts in the resolution of problems. During the last few years researchers have been working in the development of techniques to automate the reasoning stages identified in this methodology. This paper presents a Maximum Likelihood Hebbian Learning-based method that automates the organisation of cases and the retrieval stage of case-based reasoning systems. The proposed methodology has been derived as an extension of the Principal Component Analysis, and groups similar cases, identifying clusters automatically in a data set in an unsupervised mode. The method has been successfully used to completely automate the reasoning process of an oceanographic forecasting system and to improve its performance.
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Citations
Machine Learning Predictive Model for Industry 4.0
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gene‐CBR: A CASE‐BASED REASONIG TOOL FOR CANCER DIAGNOSIS USING MICROARRAY DATA SETS
Fernando Díaz,Florentino Fdez-Riverola,Juan M. Corchado +2 more
- 01 Aug 2006
TL;DR: This paper presents gene‐CBR, a hybrid model that can perform cancer classification based on microarray data that employs a case‐based reasoning model that incorporates a set of fuzzy prototypes, a growing cell structure network and aSet of rules to provide an accurate diagnosis.
98
Using Calibration and Fuzzification of Cases for Improved Diagnosis and Treatment of Stress
Shahina Begum,Mobyen Uddin Ahmed,Peter Funk,Ning Xiong,Bo von Schéele +4 more
- 01 Jan 2006
TL;DR: In the medical literature there are a number of physiological reactions related to cognitive activities and psychosocial and psychophysiological stress is such activities reflected in physiological reactions.
Quantifying the Ocean's CO2 budget with a CoHeL-IBR system
TL;DR: The problems of measuring the ocean’s CO2 budget are reviewed and the CoHeL model developed and the IBR system developed to resolve the problem are outlined.
45
•Journal Article
Evaluating the air-sea interactions and fluxes using an instance-based reasoning system
TL;DR: The problem of measuring the ocean's CO 2 budget is reviewed, the model developed to resolve it is presented and the obtained results are presented.
27
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Independent Component Analysis
A. Hyvärinen,Juha Karhunen,E. Oja +2 more
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