This work presents a content-based recommender system for machine learning classifier algorithms. Given a new data set, a recommendation of what classifier is likely to perform best is made based on classifier performance over similar known data sets. This similarity is measured according to a data set characterization that includes several state-of-the-art metrics taking into account physical structure, statistics, and information theory. A novelty with respect to prior work is the use of a robust approach based on permutation tests to directly assess whether a given learning algorithm is able to exploit the attributes in a data set to predict class labels, and compare it to the more commonly used F-score metric for evaluating classifier p...
This timely book presents Applications in Recommender Systems which are making recommendations using...
In machine learning, the choice of a learning algorithm that is suitable for the application domain ...
A central problem in machine learning is identifying a representative set of features from which to ...
This work presents a content-based recommender system for machine learning classifier algorithms. Gi...
Abstract We explore the framework of permutation-based p-values for assessing the performance of cla...
We introduce and explore an approach to estimating statisticalsignificance of classification accurac...
This paper introduces a new method for learning algorithm evaluation and selection, with empirical r...
Abstract. We investigate the problem of supervised feature selection within the filtering framework....
This paper proposes a permutation procedure for evaluating the performance of different classificati...
Much research has been done in the fields of classifier performance evaluation and optimization. Thi...
It is often difficult for data miners to know which classifier will perform most effectively in any ...
Data miners have access to a significant number of classifiers and use them on a variety of differen...
In a real-world application of supervised learning, we have a training set of examples with labels, ...
Most techniques for attribute selection in decision trees are biased towards attributes with many va...
This paper presents two methods for calculating competence of a classifier in the feature space. The...
This timely book presents Applications in Recommender Systems which are making recommendations using...
In machine learning, the choice of a learning algorithm that is suitable for the application domain ...
A central problem in machine learning is identifying a representative set of features from which to ...
This work presents a content-based recommender system for machine learning classifier algorithms. Gi...
Abstract We explore the framework of permutation-based p-values for assessing the performance of cla...
We introduce and explore an approach to estimating statisticalsignificance of classification accurac...
This paper introduces a new method for learning algorithm evaluation and selection, with empirical r...
Abstract. We investigate the problem of supervised feature selection within the filtering framework....
This paper proposes a permutation procedure for evaluating the performance of different classificati...
Much research has been done in the fields of classifier performance evaluation and optimization. Thi...
It is often difficult for data miners to know which classifier will perform most effectively in any ...
Data miners have access to a significant number of classifiers and use them on a variety of differen...
In a real-world application of supervised learning, we have a training set of examples with labels, ...
Most techniques for attribute selection in decision trees are biased towards attributes with many va...
This paper presents two methods for calculating competence of a classifier in the feature space. The...
This timely book presents Applications in Recommender Systems which are making recommendations using...
In machine learning, the choice of a learning algorithm that is suitable for the application domain ...
A central problem in machine learning is identifying a representative set of features from which to ...