Budka, M. and Gabrys, B., 2010. Electrostatic field framework for supervised and semi–supervised learning from incomplete data. Natural Computing. (In Press)
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In this paper a classification framework for incomplete data, based on electrostatic field model is proposed. An original approach to exploiting incomplete training data with missing features, involving extensive use of electrostatic charge analogy, has been used. The framework supports a hybrid supervised and unsupervised training scenario, enabling learning simultaneously from both labelled and unlabelled data using the same set of rules and adaptation mechanisms. Classification of incomplete patterns has been facilitated by introducing a local dimensionality reduction technique, which aims at exploiting all available information using the data ‘as is’, rather than trying to estimate the missing values. The performance of all proposed methods has been extensively tested in a wide range of missing data scenarios, using a number of standard benchmark datasets in order to make the results comparable with those available in current and future literature. Several modifications to the original electrostatic field classifier aiming at improving speed and robustness in higher dimensional spaces have also been introduced and discussed.
|Uncontrolled Keywords:||Pattern classification, deficient data, gravity field, electrostatic field, incomplete data, hybrid learning, machine learning, missing data, physical phenomena.|
|Subjects:||Science > Physics|
Generalities > Computer Science and Informatics > Artificial Intelligence
Generalities > Computer Science and Informatics
|Group:||School of Design, Engineering & Computing > Smart Technology Research Centre|
|Deposited By:||Professor Bogdan Gabrys|
|Deposited On:||08 Apr 2009 23:11|
|Last Modified:||07 Mar 2013 15:07|
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