OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training

The use of accuracy metric for stochastic classification training could lead the solution selecting towards the sub-optimal solution due to its less distinctive value and also unable to perform optimally when confronted with imbalanced class problem. In this study, a new evaluation metric that combi...

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Main Authors: Hossin, M., Sulaiman, M.N, Mustapha, A., Rahmat , R.W
Format: E-Article
Language:English
Published: Science Alert 2011
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Online Access:http://ir.unimas.my/id/eprint/3469/1/OAERP%20%20A%20Better%20Measure%20than%20Accuracy%20in%20Discriminating%20a%20Better%20Solution%20for%20Stochastic%20Classifictaion%20Training.pdf
http://ir.unimas.my/id/eprint/3469/
http://scialert.net/abstract/?doi=jai.2011.187.196
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spelling my.unimas.ir.34692015-09-18T07:48:15Z http://ir.unimas.my/id/eprint/3469/ OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training Hossin, M. Sulaiman, M.N Mustapha, A. Rahmat , R.W AC Collections. Series. Collected works The use of accuracy metric for stochastic classification training could lead the solution selecting towards the sub-optimal solution due to its less distinctive value and also unable to perform optimally when confronted with imbalanced class problem. In this study, a new evaluation metric that combines accuracy metric with the extended precision and recall metrics to negate these detrimental effects was proposed. This new evaluation metric is known as Optimized Accuracy with Extended Recall-precision (OAERP). By using two examples, the results has shown that the OAERP metric has produced more distinctive and discriminating values as compared to accuracy metric. This paper also empirically demonstrates that Monte Carlo Sampling (MCS) algorithm that is trained by OAERP metric was able to obtain better predictive results than the one trained by the accuracy metric alone, using nine medical data sets. In addition, the OAERP metric also performed effectively when dealing with imbalanced class problems. Moreover, the t-test analysis also shows a clear advantage of the MCS model trained by the OAERP metric against its previous metric over five out of nine medical data sets. From the abovementioned results, it is clearly indicates that the OAERP metric is more likely to choose a better solution during classification training and lead towards a better trained classification model. Science Alert 2011 E-Article NonPeerReviewed text en http://ir.unimas.my/id/eprint/3469/1/OAERP%20%20A%20Better%20Measure%20than%20Accuracy%20in%20Discriminating%20a%20Better%20Solution%20for%20Stochastic%20Classifictaion%20Training.pdf Hossin, M. and Sulaiman, M.N and Mustapha, A. and Rahmat , R.W (2011) OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training. Journal of Artificial Intelligence 4 (3) : 187-196, 2011, 4 (3). pp. 187-196. http://scialert.net/abstract/?doi=jai.2011.187.196 DOI: 10.3923/jai.2011.187.196
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 AC Collections. Series. Collected works
spellingShingle AC Collections. Series. Collected works
Hossin, M.
Sulaiman, M.N
Mustapha, A.
Rahmat , R.W
OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training
description The use of accuracy metric for stochastic classification training could lead the solution selecting towards the sub-optimal solution due to its less distinctive value and also unable to perform optimally when confronted with imbalanced class problem. In this study, a new evaluation metric that combines accuracy metric with the extended precision and recall metrics to negate these detrimental effects was proposed. This new evaluation metric is known as Optimized Accuracy with Extended Recall-precision (OAERP). By using two examples, the results has shown that the OAERP metric has produced more distinctive and discriminating values as compared to accuracy metric. This paper also empirically demonstrates that Monte Carlo Sampling (MCS) algorithm that is trained by OAERP metric was able to obtain better predictive results than the one trained by the accuracy metric alone, using nine medical data sets. In addition, the OAERP metric also performed effectively when dealing with imbalanced class problems. Moreover, the t-test analysis also shows a clear advantage of the MCS model trained by the OAERP metric against its previous metric over five out of nine medical data sets. From the abovementioned results, it is clearly indicates that the OAERP metric is more likely to choose a better solution during classification training and lead towards a better trained classification model.
format E-Article
author Hossin, M.
Sulaiman, M.N
Mustapha, A.
Rahmat , R.W
author_facet Hossin, M.
Sulaiman, M.N
Mustapha, A.
Rahmat , R.W
author_sort Hossin, M.
title OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training
title_short OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training
title_full OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training
title_fullStr OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training
title_full_unstemmed OAERP : A Better Measure than Accuracy in Discriminating a Better Solution for Stochastic Classification Training
title_sort oaerp : a better measure than accuracy in discriminating a better solution for stochastic classification training
publisher Science Alert
publishDate 2011
url http://ir.unimas.my/id/eprint/3469/1/OAERP%20%20A%20Better%20Measure%20than%20Accuracy%20in%20Discriminating%20a%20Better%20Solution%20for%20Stochastic%20Classifictaion%20Training.pdf
http://ir.unimas.my/id/eprint/3469/
http://scialert.net/abstract/?doi=jai.2011.187.196
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score 13.18916