Modern data mining applications require to perform incremental clustering over dynamic datasets by tracing temporal changes over the resulting clusters. In this paper, we propose A-Posteriori affinity Propagation (APP), an incremental extension of affinity propagation (AP) based on cluster consolidation and cluster stratification to achieve faithfulness and forgetfulness. APP enforces incremental clustering where i) new arriving objects are dynamically consolidated into previous clusters without the need to re-execute clustering over the entire dataset of objects, and ii) a faithful sequence of clustering results is produced and maintained over time, while allowing to forget obsolete clusters with decremental learning functionalities. Four popular labeled datasets are used to test the performance of APP with respect to benchmark clustering performances obtained by conventional AP and incremental affinity propagation based on nearest neighbor assignment algorithms. Experimental results show that APP achieves comparable clustering performance while enforcing scalability at the same time.

Incremental Affinity Propagation Based on Cluster Consolidation and Stratification / F. Periti, S. Montanelli, A. Ferrara, S. Castano. - In: NEURAL PROCESSING LETTERS. - ISSN 1370-4621. - 57:3(2025 Jun), pp. 44.1-44.32. [10.1007/s11063-025-11752-y]

Incremental Affinity Propagation Based on Cluster Consolidation and Stratification

F. Periti
Primo
;
S. Montanelli
Secondo
;
A. Ferrara
Penultimo
;
S. Castano
Ultimo
2025

Abstract

Modern data mining applications require to perform incremental clustering over dynamic datasets by tracing temporal changes over the resulting clusters. In this paper, we propose A-Posteriori affinity Propagation (APP), an incremental extension of affinity propagation (AP) based on cluster consolidation and cluster stratification to achieve faithfulness and forgetfulness. APP enforces incremental clustering where i) new arriving objects are dynamically consolidated into previous clusters without the need to re-execute clustering over the entire dataset of objects, and ii) a faithful sequence of clustering results is produced and maintained over time, while allowing to forget obsolete clusters with decremental learning functionalities. Four popular labeled datasets are used to test the performance of APP with respect to benchmark clustering performances obtained by conventional AP and incremental affinity propagation based on nearest neighbor assignment algorithms. Experimental results show that APP achieves comparable clustering performance while enforcing scalability at the same time.
Cluster consolidation; Cluster stratification; Evolutionary clustering; Incremental affinity propagation;
Settore INFO-01/A - Informatica
giu-2025
21-apr-2025
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/1163877
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