Discovering Top-k Rules using Subjective and Objective Criteria

Author:

Fan Wenfei1ORCID,Han Ziyan2ORCID,Wang Yaoshu3ORCID,Xie Min3ORCID

Affiliation:

1. Shenzhen Institute of Computing Sciences; University of Edinburgh; & Beihang University, Shenzhen, China

2. Beihang University, Beijing, China

3. Shenzhen Institute of Computing Sciences, Shenzhen, China

Abstract

This paper studies two questions about rule discovery. Can we characterize the usefulness of rules using quantitative criteria? How can we discover rules using those criteria? As a testbed, we consider entity enhancing rules (REEs), which subsume common association rules and data quality rules as special cases. We characterize REEs using a bi-criteria model, with both objective measures such as support and confidence, and subjective measures for the user's needs; we learn the subjective measure and the weight vectors via active learning. Based on the bi-criteria model, we develop a top-k algorithm to discover top-ranked REEs, and an any-time algorithm for successive discovery via lazy evaluation. We parallelize these algorithms such that they guarantee to reduce runtime when more processors are used. Using real-life and synthetic datasets, we show that the algorithms are able to find top-ranked rules and speed up conventional rule-discovery methods by 134X on average.

Funder

Royal Society Wolfson Research Merit Award

NSFC

Guangdong Basic and Applied Basic Research Foundation

Publisher

Association for Computing Machinery (ACM)

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5. DFD

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