Significant Correlation Pattern Mining in Smart Homes

Author:

Chen Yi-Cheng1,Peng Wen-Chih2,Huang Jiun-Long2,Lee Wang-Chien3

Affiliation:

1. Tamkang University

2. National Chiao Tung University

3. IPennsylvania State University

Abstract

Owing to the great advent of sensor technology, the usage data of appliances in a house can be logged and collected easily today. However, it is a challenge for the residents to visualize how these appliances are used. Thus, mining algorithms are much needed to discover appliance usage patterns. Most previous studies on usage pattern discovery are mainly focused on analyzing the patterns of single appliance rather than mining the usage correlation among appliances. In this article, a novel algorithm, namely Correlation Pattern Miner (CoPMiner), is developed to capture the usage patterns and correlations among appliances probabilistically. CoPMiner also employs four pruning techniques and a statistical model to reduce the search space and filter out insignificant patterns, respectively. Furthermore, the proposed algorithm is applied on a real-world dataset to show the practicability of correlation pattern mining.

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

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3. RHUPS;ACM Transactions on Intelligent Systems and Technology;2021-04-30

4. A Conflict Detection Framework for IoT Services in Multi-resident Smart Homes;2020 IEEE International Conference on Web Services (ICWS);2020-10

5. Mining High-utility Temporal Patterns on Time Interval–based Data;ACM Transactions on Intelligent Systems and Technology;2020-08-31

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