Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier

All stochastic classifiers attempt to improve their classifica-tion performance by constructing an optimized classifier. Typically, all of stochastic classification algorithms employ accuracy metric to discriminate an optimal solution. However, the use of accuracy metric could lead the so-lution tow...

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Main Authors: Hossin, M., Sulaiman, M.N, Mustapha, N., Rahmat, R.W
Format: Proceeding
Language:English
Published: 2011
Subjects:
Online Access:http://ir.unimas.my/id/eprint/3353/1/Hossin%20M..pdf
http://ir.unimas.my/id/eprint/3353/
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Institution: Universiti Malaysia Sarawak
Language: English
id my.unimas.ir.3353
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spelling my.unimas.ir.33532022-01-04T06:55:49Z http://ir.unimas.my/id/eprint/3353/ Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier Hossin, M. Sulaiman, M.N Mustapha, N. Rahmat, R.W T Technology (General) All stochastic classifiers attempt to improve their classifica-tion performance by constructing an optimized classifier. Typically, all of stochastic classification algorithms employ accuracy metric to discriminate an optimal solution. However, the use of accuracy metric could lead the so-lution towards the sub-optimal solution due less discriminating power. Moreover, the accuracy metric also unable to perform optimally when deal-ing with imbalanced class distribution. In this study, we propose a new evaluation metric that combines accuracy metric with the extended precision and recall metrics to negate these detrimental effects. We refer the new evaluation metric as optimized accuracy with recall-precision (OARP). This paper demonstrates that the OARP metric is more discriminating than the accuracy metric and able to perform optimally when dealing with imba-lanced class distribution using one simple counter-example. We also dem-onstrate 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 accuracy and F-Measure metrics. Additionally, the t-test analysis also shows a clear advantage of the MCS model trained with the OARP metric over the two se-lected metrics for almost five medical data sets. 2011 Proceeding NonPeerReviewed text en http://ir.unimas.my/id/eprint/3353/1/Hossin%20M..pdf Hossin, M. and Sulaiman, M.N and Mustapha, N. and Rahmat, R.W (2011) Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier. In: Proceedings of the 3rd International Conference on Computing and Informatics, ICOCI 2011, 8-9 June, 2011 Bandung, Indonesia, 2011,8-9 June, Bandung, Indonesia.
institution Universiti Malaysia Sarawak
building Centre for Academic Information Services (CAIS)
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Sarawak
content_source UNIMAS Institutional Repository
url_provider http://ir.unimas.my/
language English
topic T Technology (General)
spellingShingle T Technology (General)
Hossin, M.
Sulaiman, M.N
Mustapha, N.
Rahmat, R.W
Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier
description All stochastic classifiers attempt to improve their classifica-tion performance by constructing an optimized classifier. Typically, all of stochastic classification algorithms employ accuracy metric to discriminate an optimal solution. However, the use of accuracy metric could lead the so-lution towards the sub-optimal solution due less discriminating power. Moreover, the accuracy metric also unable to perform optimally when deal-ing with imbalanced class distribution. In this study, we propose a new evaluation metric that combines accuracy metric with the extended precision and recall metrics to negate these detrimental effects. We refer the new evaluation metric as optimized accuracy with recall-precision (OARP). This paper demonstrates that the OARP metric is more discriminating than the accuracy metric and able to perform optimally when dealing with imba-lanced class distribution using one simple counter-example. We also dem-onstrate 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 accuracy and F-Measure metrics. Additionally, the t-test analysis also shows a clear advantage of the MCS model trained with the OARP metric over the two se-lected metrics for almost five medical data sets.
format Proceeding
author Hossin, M.
Sulaiman, M.N
Mustapha, N.
Rahmat, R.W
author_facet Hossin, M.
Sulaiman, M.N
Mustapha, N.
Rahmat, R.W
author_sort Hossin, M.
title Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier
title_short Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier
title_full Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier
title_fullStr Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier
title_full_unstemmed Improving Accuracy Metric with Precision and Recall Metrics for Optimizing Stochastic Classifier
title_sort improving accuracy metric with precision and recall metrics for optimizing stochastic classifier
publishDate 2011
url http://ir.unimas.my/id/eprint/3353/1/Hossin%20M..pdf
http://ir.unimas.my/id/eprint/3353/
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