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 example...
Supervised learning is a machine learning technique used for creating a data prediction model. This ...
We present an improved bound on the difference between training and test errors for voting classifie...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...
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...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
<p>Accuracy on the training and validation sets as a function of the number of steps of training. Tr...
This study investigates two different issues of performance measure in data classification problem. ...
n this paper we seek the minima of performance metrics for binary classification to facilitate compa...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
Supervised learning is a machine learning technique used for creating a data prediction model. This ...
We present an improved bound on the difference between training and test errors for voting classifie...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...
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...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
The use of accuracy metric for stochastic classification training could lead the solution selecting ...
The accuracy metric has been widely used for discriminating and selecting an optimal solution in con...
Practitioners of data mining and machine learning have long observed that the imbalance of classes i...
<p>Accuracy on the training and validation sets as a function of the number of steps of training. Tr...
This study investigates two different issues of performance measure in data classification problem. ...
n this paper we seek the minima of performance metrics for binary classification to facilitate compa...
In practical applications, machine learning algorithms are often needed to learn classifiers that op...
Supervised learning is a machine learning technique used for creating a data prediction model. This ...
We present an improved bound on the difference between training and test errors for voting classifie...
(a) and (b) show the box plot of the five-class classification accuracy with RF and SVM, respectivel...