Please use this identifier to cite or link to this item: https://open.uns.ac.rs/handle/123456789/3178
Title: LTR - MDTS structure - a structure for multiple dependent time series prediction
Authors: Pecev P.
Rackov, Milan
Issue Date: 1-Jun-2017
Journal: Computer Science and Information Systems
Abstract: © 2017 ComSIS Consortium. All rights reserved. The subject of research presented in this paper is to model a neural network structure and appropriate training algorithm that is most suited for multiple dependent time series prediction / deduction. The basic idea is to take advantage of neural networks in solving the problem of prediction of synchronized basketball referees’ movement during a basketball action. Presentation of time series stemming from the aforementioned problem, by using traditional Multilayered Perceptron neural networks (MLP), leads to a sort of paradox of backward time lapse effect that certain input and hidden layers nodes have on output nodes that correspond to previous moments in time. This paper describes conducted research and analysis of different methods of overcoming the presented problem. Presented paper is essentially split into two parts. First part gives insight on efforts that are put into training set configuration on standard Multi Layered Perceptron back propagation neural networks, in order to decrease backwards time lapse effects that certain input and hidden layers nodes have on output nodes. Second part of paper focuses on the results that a new neural network structure called LTR - MDTS provides. Foundation of LTR - MDTS design relies on a foundation on standard MLP neural networks with certain, left-to-right synapse removal to eliminate aforementioned backwards time lapse effect on the output nodes.
URI: https://open.uns.ac.rs/handle/123456789/3178
ISSN: 18200214
DOI: 10.2298/CSIS150815004P
Appears in Collections:FTN Publikacije/Publications

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