A clustering outcome for high-dimensional data is typically interpreted via post-processing, involving dimension reduction and subsequent visualization. This destroys the meaning of the data and obfuscates interpretations. We propose algorithm-agnostic interpretation methods to explain clustering outcomes in reduced dimensions while preserving the integrity of the data. The permutation feature importance for clustering represents a general framework based on shuffling feature values and measuring changes in cluster assignments through custom score functions. The individual conditional expectation for clustering indicates observation-wise changes in the cluster assignment due to changes in the data. The partial dependence for clustering eval...
Clustering seeks to group or to lump together objects or variables that share some observed qualitie...
Interpretation of machine learning results is a major challenge for non-technical experts, with visu...
Clustering is an important technique for understanding and analysis of large multi-dimensional datas...
The expanding field of eXplainable Artificial Intelligence research is primarily concerned with the ...
Abstract State-of-the-art clustering algorithms provide little insight into the ratio...
This study focuses on exploring the use of local interpretability methods for explaining time series...
[0001] In machine learning, there are currently debates about what an explanation or explai...
Dimensionality reduction and clustering techniques are frequently used to analyze complex data sets,...
Clustering, the problem of grouping similar data, has been extensively studied since at least the 19...
Clustering is an unsupervised machine learning methodology where unlabeled elements/objects are grou...
Clustering algorithms allow data to be partitioned into subgroups, or clusters, in an unsupervised m...
Data analysis plays an indispensable role for understanding various phenomena. Cluster analysis, pri...
Explainable Artificial Intelligence (XAI) aims at introducing transparency and intelligibility into ...
The data preprocessing stage is crucial in clustering. Features may describe entities using differen...
Data representations in low dimensions such as results from unsupervised dimensionality reduction me...
Clustering seeks to group or to lump together objects or variables that share some observed qualitie...
Interpretation of machine learning results is a major challenge for non-technical experts, with visu...
Clustering is an important technique for understanding and analysis of large multi-dimensional datas...
The expanding field of eXplainable Artificial Intelligence research is primarily concerned with the ...
Abstract State-of-the-art clustering algorithms provide little insight into the ratio...
This study focuses on exploring the use of local interpretability methods for explaining time series...
[0001] In machine learning, there are currently debates about what an explanation or explai...
Dimensionality reduction and clustering techniques are frequently used to analyze complex data sets,...
Clustering, the problem of grouping similar data, has been extensively studied since at least the 19...
Clustering is an unsupervised machine learning methodology where unlabeled elements/objects are grou...
Clustering algorithms allow data to be partitioned into subgroups, or clusters, in an unsupervised m...
Data analysis plays an indispensable role for understanding various phenomena. Cluster analysis, pri...
Explainable Artificial Intelligence (XAI) aims at introducing transparency and intelligibility into ...
The data preprocessing stage is crucial in clustering. Features may describe entities using differen...
Data representations in low dimensions such as results from unsupervised dimensionality reduction me...
Clustering seeks to group or to lump together objects or variables that share some observed qualitie...
Interpretation of machine learning results is a major challenge for non-technical experts, with visu...
Clustering is an important technique for understanding and analysis of large multi-dimensional datas...