The evaluation of classifiers or learning algorithms is not a topic that has, generally, been given much thought in the fields of Machine Learning and Data Mining. More often than not, common off-the-shelf metrics such as Accuracy, Precision/Recall and ROC Analysis as well as confidence estimation methods, such as the t-test, are applied without much attention being paid to their meaning. The purpose of this paper is to give the reader an intuitive idea of what could go wrong with our commonly used evaluation methods. In particular, we show, through examples, that since evaluation metrics and confidence estimation methods summarize the system’s performance, they can, at times, obscure important behaviors of the hypotheses or algorithms unde...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
One of the greatest machine learning prob-lems of today is an intractable number of new algorithms b...
Forming a reliable judgement of a machine learning (ML) model's appropriateness for an application e...
Developing state-of-the-art approaches for specific tasks is a major driving force in our research c...
This paper gives an overview of some ways in which our understanding of performance evaluation measu...
How can one meaningfully make a measurement, if the meter does not conform to any standard and its s...
International audienceThis chapter describes how to validate a machine learning model. We start by d...
This thesis addresses evaluation methods used to measure the performance of machine learning algorit...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
This is the data management plan for the purpose of this report, to compare three different classifi...
The mean result of machine learning models is determined by utilizing k-fold cross-validation. The a...
Abstract. How to assess the performance of machine learning algorithms is a problem of increasing in...
Research on decision support applications in healthcare, such as those related to diagnosis, predict...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
One of the greatest machine learning prob-lems of today is an intractable number of new algorithms b...
Forming a reliable judgement of a machine learning (ML) model's appropriateness for an application e...
Developing state-of-the-art approaches for specific tasks is a major driving force in our research c...
This paper gives an overview of some ways in which our understanding of performance evaluation measu...
How can one meaningfully make a measurement, if the meter does not conform to any standard and its s...
International audienceThis chapter describes how to validate a machine learning model. We start by d...
This thesis addresses evaluation methods used to measure the performance of machine learning algorit...
Different evaluation measures assess different characteristics of machine learning algorithms. The e...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
This is the data management plan for the purpose of this report, to compare three different classifi...
The mean result of machine learning models is determined by utilizing k-fold cross-validation. The a...
Abstract. How to assess the performance of machine learning algorithms is a problem of increasing in...
Research on decision support applications in healthcare, such as those related to diagnosis, predict...
Decision trees are one of the most powerful and commonly used supervised learning algorithms in the ...
Machine Learning (ML) is a research area that has developed over the past few decades as a result of...
One of the greatest machine learning prob-lems of today is an intractable number of new algorithms b...