Much research has been done in the fields of classifier performance evaluation and optimization. This work summarizes this research and tries to answer the question if algorithm parameter tuning has more impact on performance than the choice of algorithm. An alternative way of evaluation; a measure function is also demonstrated. This type of evaluation is compared with one of the most accepted methods; the cross-validation test. Experiments, described in this work, show that parameter tuning often has more impact on performance than the actual choice of algorithm and that the measure function could be a complement or an alternative to the standard cross-validation tests
The assessment of the performance of learners by means of benchmark experiments is an established ex...
<p>Performance comparisons of multiple individual classifiers on the training dataset by 10-fold cro...
In a real-world application of supervised learning, we have a training set of examples with labels, ...
Much research has been done in the fields of classifier performance evaluation and optimization. Thi...
The impact of learning algorithm optimization by means of parameter tuning is studied. To do this, t...
The concept of measure functions for classifier performance is suggested. This concept provides an a...
Evaluation of classifier performance is often based on statistical methods e.g. cross-validation tes...
International audienceThe selection of the best classification algorithm for a given dataset is a ve...
<p>Each algorithm trained using selected features and evaluated with 10-fold cross-validation. Value...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
This paper gives an overview of some ways in which our understanding of performance evaluation measu...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
The fundamental question studied in this thesis is how to evaluate and analyse supervised learning a...
In the research of classification task of machine learning,it is important for correctly evaluating ...
This thesis addresses evaluation methods used to measure the performance of machine learning algorit...
The assessment of the performance of learners by means of benchmark experiments is an established ex...
<p>Performance comparisons of multiple individual classifiers on the training dataset by 10-fold cro...
In a real-world application of supervised learning, we have a training set of examples with labels, ...
Much research has been done in the fields of classifier performance evaluation and optimization. Thi...
The impact of learning algorithm optimization by means of parameter tuning is studied. To do this, t...
The concept of measure functions for classifier performance is suggested. This concept provides an a...
Evaluation of classifier performance is often based on statistical methods e.g. cross-validation tes...
International audienceThe selection of the best classification algorithm for a given dataset is a ve...
<p>Each algorithm trained using selected features and evaluated with 10-fold cross-validation. Value...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
This paper gives an overview of some ways in which our understanding of performance evaluation measu...
Abstract — The selection of the best classification algorithm for a given dataset is a very widespre...
The fundamental question studied in this thesis is how to evaluate and analyse supervised learning a...
In the research of classification task of machine learning,it is important for correctly evaluating ...
This thesis addresses evaluation methods used to measure the performance of machine learning algorit...
The assessment of the performance of learners by means of benchmark experiments is an established ex...
<p>Performance comparisons of multiple individual classifiers on the training dataset by 10-fold cro...
In a real-world application of supervised learning, we have a training set of examples with labels, ...