This paper proposes a permutation procedure for evaluating the performance of different classification methods. In particular, we focus on two of the most widespread and used classification methodologies: latent class analysis and k-means clustering. The classification performance is assessed by means of a permutation procedure which allows for a direct comparison of the methods, the development of a statistical test, and points out better potential solutions. Our proposal provides an innovative framework for the validation of the data partitioning and offers a guide in the choice of which classification procedure should be used
This paper aimed to determine the efficiency of classifiers for high-dimensional classification meth...
This paper introduces an innovative approach for detecting a sub optimal partition starting from the...
The paper compares properties of methods, which are commonly used for the task of classification ana...
This paper proposes a permutation procedure for evaluating the performance of different classificati...
Abstract We explore the framework of permutation-based p-values for assessing the performance of cla...
This work presents a content-based recommender system for machine learning classifier algorithms. Gi...
We introduce and explore an approach to estimating statisticalsignificance of classification accurac...
Performance comparison of clustering algorithms are often done in terms of different confusion matri...
Many real-world systems can be studied in terms of pattern recognition tasks, so that proper use (an...
Cluster analysis is the generic name of all those techniques which allow to aggregate n-units into k...
Summarization: The classification problem is of major importance to a plethora of research fields. T...
In this work, the selection of an effective algorithm for solving the classification problem was con...
International audienceThe selection of the best classification algorithm for a given dataset is a ve...
Many real-world systems can be studied in terms of pattern recognition tasks, so that proper use (an...
The comparison of two partitions in Cluster Analysis can be performed using various classical coeffi...
This paper aimed to determine the efficiency of classifiers for high-dimensional classification meth...
This paper introduces an innovative approach for detecting a sub optimal partition starting from the...
The paper compares properties of methods, which are commonly used for the task of classification ana...
This paper proposes a permutation procedure for evaluating the performance of different classificati...
Abstract We explore the framework of permutation-based p-values for assessing the performance of cla...
This work presents a content-based recommender system for machine learning classifier algorithms. Gi...
We introduce and explore an approach to estimating statisticalsignificance of classification accurac...
Performance comparison of clustering algorithms are often done in terms of different confusion matri...
Many real-world systems can be studied in terms of pattern recognition tasks, so that proper use (an...
Cluster analysis is the generic name of all those techniques which allow to aggregate n-units into k...
Summarization: The classification problem is of major importance to a plethora of research fields. T...
In this work, the selection of an effective algorithm for solving the classification problem was con...
International audienceThe selection of the best classification algorithm for a given dataset is a ve...
Many real-world systems can be studied in terms of pattern recognition tasks, so that proper use (an...
The comparison of two partitions in Cluster Analysis can be performed using various classical coeffi...
This paper aimed to determine the efficiency of classifiers for high-dimensional classification meth...
This paper introduces an innovative approach for detecting a sub optimal partition starting from the...
The paper compares properties of methods, which are commonly used for the task of classification ana...