TY - JOUR
T1 - Learning unified distance metric for heterogeneous attribute data clustering
AU - Zhang, Yiqun
AU - Zhao, Mingjie
AU - Chen, Yizhou
AU - Lu, Yang
AU - Cheung, Yiu-ming
N1 - This work was supported in part by the National Natural Science Foundation of China (NSFC) under grants: 62476063, and 62376233, the NSFC/Research Grants Council (RGC) Joint Research Scheme, China under the grant N_HKBU214/21, the Natural Science Foundation of Guangdong Province, China under grant 2023A1515012855, the Natural Science Foundation of Fujian Province, China under grant 2024J09001, the General Research Fund of RGC, China under grants: 12202622, and 12201323, and the RGC Senior Research Fellow Scheme, China under grant SRFS2324-2S02.
Publisher Copyright:
© 2025 Elsevier Ltd.
PY - 2025/5/10
Y1 - 2025/5/10
N2 - Datasets composed of numerical and categorical attributes (also called mixed data hereinafter) are common in real clustering tasks. Differing from numerical attributes that indicate tendencies between two concepts (e.g., high and low temperature) with their values in well-defined Euclidean distance space, categorical attribute values are different concepts (e.g., different occupations) embedded in an implicit space. Simultaneously exploiting these two very different types of information is an unavoidable but challenging problem, and most advanced attempts either encode the heterogeneous numerical and categorical attributes into one type, or define a unified metric for them for mixed data clustering, leaving their inherent connection unrevealed. This paper, therefore, studies the connection among any-type of attributes and proposes a novel Heterogeneous Attribute Reconstruction and Representation (HARR) learning paradigm accordingly for cluster analysis. The paradigm transforms heterogeneous attributes into a homogeneous status for distance metric learning, and integrates the learning with clustering to automatically adapt the metric to different clustering tasks. Differing from most existing works that directly adopt defined distance metrics or learn attribute weights to search clusters in a subspace. We propose to project the values of each attribute into unified learnable multiple spaces to more finely represent and learn the distance metric for categorical data. HARR is parameter-free, convergence-guaranteed, and can more effectively self-adapt to different sought number of clusters k. Extensive experiments illustrate its superiority in terms of accuracy and efficiency.
AB - Datasets composed of numerical and categorical attributes (also called mixed data hereinafter) are common in real clustering tasks. Differing from numerical attributes that indicate tendencies between two concepts (e.g., high and low temperature) with their values in well-defined Euclidean distance space, categorical attribute values are different concepts (e.g., different occupations) embedded in an implicit space. Simultaneously exploiting these two very different types of information is an unavoidable but challenging problem, and most advanced attempts either encode the heterogeneous numerical and categorical attributes into one type, or define a unified metric for them for mixed data clustering, leaving their inherent connection unrevealed. This paper, therefore, studies the connection among any-type of attributes and proposes a novel Heterogeneous Attribute Reconstruction and Representation (HARR) learning paradigm accordingly for cluster analysis. The paradigm transforms heterogeneous attributes into a homogeneous status for distance metric learning, and integrates the learning with clustering to automatically adapt the metric to different clustering tasks. Differing from most existing works that directly adopt defined distance metrics or learn attribute weights to search clusters in a subspace. We propose to project the values of each attribute into unified learnable multiple spaces to more finely represent and learn the distance metric for categorical data. HARR is parameter-free, convergence-guaranteed, and can more effectively self-adapt to different sought number of clusters k. Extensive experiments illustrate its superiority in terms of accuracy and efficiency.
KW - Distance structure reconstruction
KW - Heterogeneous attribute
KW - Learnable weighting
KW - Mixed data clustering
UR - https://www.sciencedirect.com/science/article/pii/S0957417425003604?via%3Dihub
UR - http://www.scopus.com/inward/record.url?scp=85217957139&partnerID=8YFLogxK
U2 - 10.1016/j.eswa.2025.126738
DO - 10.1016/j.eswa.2025.126738
M3 - Journal article
SN - 0957-4174
VL - 273
JO - Expert Systems with Applications
JF - Expert Systems with Applications
M1 - 126738
ER -