Wang, QingVatsalan, DinushaChristen, PeterHu, YichenEstivill-Castro, V.Simoff, S.2024-02-20December 6http://hdl.handle.net/1885/313756Temporal record linkage is the process of identifying groups of records which are collected over long periods of time, such as census databases or voter registration databases, that represent the same real-world entities. These datasets often contain temporal information for each record, such as the time when a record was created, or the time when it was modified. Unlike traditional record linkage, which treats differences between records from the same entity as errors or variations, temporal record linkage aims to capture records from entities where the details of these entities change over the time. This paper proposes a temporal record linkage approach that learns the probabilities for attribute values of records to change within different periods of time, which extends an existing temporal approach decay model. The proposed method uses a regression based machine learning model to predict decay with sets of attributes, where attribute values in each set could affect the decay of others. Our experimental results show that the proposed approach results in generally better recall than baseline approaches on real-world datasets.This work was partially funded by the Australian Research Council (ARC) under Discovery Project DP160101934.application/pdfen-AUCopyright © 2016, Australian Computer Society, Inc.Data matchingentity resolutionrecord linkagetemporal dataRegression classification for Improved Temporal Record Linkage20162022-10-02