Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.14279/3951
Title: Neural network methods for one-to-many multi-valued mapping problems
Authors: Jayne, Chrisina 
Christodoulou, Chris 
Lanitis, Andreas 
Major Field of Science: Humanities
Field Category: Arts
Keywords: Exam grades prediction;Multivariate statistics;Neural networks;One-to-many mapping;Stock price prediction
Issue Date: Sep-2011
Source: Neural Computing and Applications, 2011, vol. 20, no. 6, pp. 775-785
Volume: 20
Issue: 6
Start page: 775
End page: 785
Journal: Neural Computing and Applications 
Abstract: An investigation of the applicability of neural network-based methods in predicting the values of multiple parameters, given the value of a single parameter within a particular problem domain is presented. In this context, the input parameter may be an important source of variation that is related with a complex mapping function to the remaining sources of variation within a multivariate distribution. The definition of the relationship between the variables of a multivariate distribution and a single source of variation allows the estimation of the values of multiple variables given the value of the single variable, addressing in that way an ill-conditioned one-to-many mapping problem. As part of our investigation, two problem domains are considered: predicting the values of individual stock shares, given the value of the general index, and predicting the grades received by high school pupils, given the grade for a single course or the average grade. With our work, the performance of standard neural network-based methods and in particular multilayer perceptrons (MLPs), radial basis functions (RBFs), mixture density networks (MDNs) and a latent variable method, the general topographic mapping (GTM), is compared. According to the results, MLPs and RBFs outperform MDNs and the GTM for these one-to-many mapping problems.
URI: https://hdl.handle.net/20.500.14279/3951
ISSN: 14333058
DOI: 10.1007/s00521-010-0483-4
Rights: © Springer
Type: Article
Affiliation : London Metropolitan University 
Cyprus University of Technology 
University of Cyprus 
Publication Type: Peer Reviewed
Appears in Collections:Άρθρα/Articles

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