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    <dc:date>2026-04-26T08:07:02Z</dc:date>
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    <title>Robust Prediction of Stock Indices using PSO based Adaptive Linear Combiner</title>
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    <description>Title: Robust Prediction of Stock Indices using PSO based Adaptive Linear Combiner
Authors: Majhi, Ritanjali; Panda, G.; Majhi, Babita
Abstract: The present paper employs a particle swarm&#xD;
optimization (PSO) based adaptive linear combiner for efficient&#xD;
prediction of various stock indices in presence of strong outliers&#xD;
in the training data. The connecting weights of the model are&#xD;
updated by minimizing the Wilcoxon norm of the error vector&#xD;
by PSO. The short and long term prediction performance of&#xD;
the new model is evaluated with test data and the results&#xD;
obtained are compared with those obtained from the&#xD;
conventional PSO based model. It is in general observed that&#xD;
the proposed model is computationally more efficient,&#xD;
prediction wise more accurate and more robust against outliers&#xD;
in training set compared to those obtained by standard PSO&#xD;
based model.
Description: NITW</description>
    <dc:date>2009-01-01T00:00:00Z</dc:date>
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