The accuracy metric has been widely used for discriminating and selecting an optimal solution in constructing an optimized classifier. However, the use of accuracy metric leads the searching process to the sub-optimal solutions due to its limited capability of discriminating values. In this study, we propose a hybrid evaluation metric, which combines the accuracy metric with the precision and recall metrics. We call this new performance metric as Optimized Accuracy with Recall-Precision (OARP). This paper demonstrates that the OARP metric is more discriminating than the accuracy metric using two counter-examples. To verify this advantage, we conduct an empirical verification using a statistical discriminative analysis to prove that the OAR...
In real-world environments it usually is difficult to specify target operating conditions precisely,...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or ...
All stochastic classifiers attempt to improve their classification performance by constructing an op...
All stochastic classifiers attempt to improve their classifica-tion performance by constructing an o...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or s...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
This study investigates two different issues of performance measure in data classification problem. ...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
Evaluation metric plays a critical role in achieving the optimal classifier during the classificatio...
In real-world environments, it is usually difficult to specify target operating conditions precisely...
Given a learning problem with real-world tradeoffs, which cost function should the model be trained ...
In real-world environments it usually is difficult to specify target operating conditions precisely,...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or ...
All stochastic classifiers attempt to improve their classification performance by constructing an op...
All stochastic classifiers attempt to improve their classifica-tion performance by constructing an o...
Problem statement: Typically, the accuracy metric is often applied for optimizing the heuristic or s...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
This study investigates two different issues of performance measure in data classification problem. ...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
Evaluation metric plays a critical role in achieving the optimal classifier during the classificatio...
In real-world environments, it is usually difficult to specify target operating conditions precisely...
Given a learning problem with real-world tradeoffs, which cost function should the model be trained ...
In real-world environments it usually is difficult to specify target operating conditions precisely,...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...