A novel performance metric for building an optimized classifier

Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or stochastic classification models. However, the use of accuracy metric might lead the searching process to the sub-optimal solutions due to its less discriminating values and it is also not robust to th...

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Main Authors: Hossin, Mohammad, Sulaiman, Md. Nasir, Mustapha, Aida, Mustapha, Norwati
Format: Article
Language:English
Published: Science Publications 2011
Online Access:http://psasir.upm.edu.my/id/eprint/22462/1/jcssp.2011.582.590.pdf
http://psasir.upm.edu.my/id/eprint/22462/
http://www.thescipub.com/abstract/10.3844/jcssp.2011.582.590
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Institution: Universiti Putra Malaysia
Language: English
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spelling my.upm.eprints.224622016-06-08T08:58:37Z http://psasir.upm.edu.my/id/eprint/22462/ A novel performance metric for building an optimized classifier Hossin, Mohammad Sulaiman, Md. Nasir Mustapha, Aida Mustapha, Norwati Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or stochastic classification models. However, the use of accuracy metric might lead the searching process to the sub-optimal solutions due to its less discriminating values and it is also not robust to the changes of class distribution. Approach: To solve these detrimental effects, we propose a novel performance metric which combines the beneficial properties of accuracy metric with the extended recall and precision metrics. We call this new performance metric as Optimized Accuracy with Recall-Precision (OARP). Results: In this study, we demonstrate that the OARP metric is theoretically better than the accuracy metric using four generated examples. We also demonstrate empirically that a naïve stochastic classification algorithm, which is Monte Carlo Sampling (MCS) algorithm trained with the OARP metric, is able to obtain better predictive results than the one trained with the conventional accuracy metric. Additionally, the t-test analysis also shows a clear advantage of the MCS model trained with the OARP metric over the accuracy metric alone for all binary data sets. Conclusion: The experiments have proved that the OARP metric leads stochastic classifiers such as the MCS towards a better training model, which in turn will improve the predictive results of any heuristic or stochastic classification models. Science Publications 2011 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/22462/1/jcssp.2011.582.590.pdf Hossin, Mohammad and Sulaiman, Md. Nasir and Mustapha, Aida and Mustapha, Norwati (2011) A novel performance metric for building an optimized classifier. Journal of Computer Science, 7 (4). pp. 582-590. ISSN 1549-3636; ESSN: 1552-6607 http://www.thescipub.com/abstract/10.3844/jcssp.2011.582.590 10.3844/jcssp.2011.582.590
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or stochastic classification models. However, the use of accuracy metric might lead the searching process to the sub-optimal solutions due to its less discriminating values and it is also not robust to the changes of class distribution. Approach: To solve these detrimental effects, we propose a novel performance metric which combines the beneficial properties of accuracy metric with the extended recall and precision metrics. We call this new performance metric as Optimized Accuracy with Recall-Precision (OARP). Results: In this study, we demonstrate that the OARP metric is theoretically better than the accuracy metric using four generated examples. We also demonstrate empirically that a naïve stochastic classification algorithm, which is Monte Carlo Sampling (MCS) algorithm trained with the OARP metric, is able to obtain better predictive results than the one trained with the conventional accuracy metric. Additionally, the t-test analysis also shows a clear advantage of the MCS model trained with the OARP metric over the accuracy metric alone for all binary data sets. Conclusion: The experiments have proved that the OARP metric leads stochastic classifiers such as the MCS towards a better training model, which in turn will improve the predictive results of any heuristic or stochastic classification models.
format Article
author Hossin, Mohammad
Sulaiman, Md. Nasir
Mustapha, Aida
Mustapha, Norwati
spellingShingle Hossin, Mohammad
Sulaiman, Md. Nasir
Mustapha, Aida
Mustapha, Norwati
A novel performance metric for building an optimized classifier
author_facet Hossin, Mohammad
Sulaiman, Md. Nasir
Mustapha, Aida
Mustapha, Norwati
author_sort Hossin, Mohammad
title A novel performance metric for building an optimized classifier
title_short A novel performance metric for building an optimized classifier
title_full A novel performance metric for building an optimized classifier
title_fullStr A novel performance metric for building an optimized classifier
title_full_unstemmed A novel performance metric for building an optimized classifier
title_sort novel performance metric for building an optimized classifier
publisher Science Publications
publishDate 2011
url http://psasir.upm.edu.my/id/eprint/22462/1/jcssp.2011.582.590.pdf
http://psasir.upm.edu.my/id/eprint/22462/
http://www.thescipub.com/abstract/10.3844/jcssp.2011.582.590
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