In the research of classification task of machine learning,it is important for correctly evaluating the performance of the learning algorithm.In practical application,many performance measure indexes are proposed based on different perspectives.Three kinds of performance measure indexes based on error rate,confusion matrix and statistical test are introduced in this paper.The background,significance and scope of each measure index are discussed.The differences of different methods are analyzed.The future research problems and directions are also put forward and analyzed.Furthermore,the differences of these performance measure indexes are also compared by experimental data in portrait and landscape.The consistency of these performance measur...
Categorical classifier performance is typically evaluated with respect to error rate, expressed as a...
Machine learning techniques are used by many organizations to analyze the data and finding some mean...
<p>The performances of the different classification algorithms as a function of the number of trials...
International audienceThe selection of the best classification algorithm for a given dataset is a ve...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Much research has been done in the fields of classifier performance evaluation and optimization. Thi...
Binary classification is one of the most frequent studies in applied machine learning problems in va...
The concept of measure functions for classifier performance is suggested. This concept provides an a...
<p>Performance comparison of the proposed algorithm and 17 existing algorithms using four existing e...
<p>Performance measures of ranking algorithms using the FM index from March 15 to March 25, 2018.</p
This paper gives an overview of some ways in which our understanding of performance evaluation measu...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
Performance comparison of clustering algorithms are often done in terms of different confusion matri...
A large number of techniques has been developed so far to tell the diversity of machine learning. Ma...
Categorical classifier performance is typically evaluated with respect to error rate, expressed as a...
Machine learning techniques are used by many organizations to analyze the data and finding some mean...
<p>The performances of the different classification algorithms as a function of the number of trials...
International audienceThe selection of the best classification algorithm for a given dataset is a ve...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
Much research has been done in the fields of classifier performance evaluation and optimization. Thi...
Binary classification is one of the most frequent studies in applied machine learning problems in va...
The concept of measure functions for classifier performance is suggested. This concept provides an a...
<p>Performance comparison of the proposed algorithm and 17 existing algorithms using four existing e...
<p>Performance measures of ranking algorithms using the FM index from March 15 to March 25, 2018.</p
This paper gives an overview of some ways in which our understanding of performance evaluation measu...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
Performance comparison of clustering algorithms are often done in terms of different confusion matri...
A large number of techniques has been developed so far to tell the diversity of machine learning. Ma...
Categorical classifier performance is typically evaluated with respect to error rate, expressed as a...
Machine learning techniques are used by many organizations to analyze the data and finding some mean...
<p>The performances of the different classification algorithms as a function of the number of trials...