Large-Scale Frequent Episode Mining from Complex Event Sequences with Hierarchies

Author:

Ao Xiang1ORCID,Shi Haoran2,Wang Jin3,Zuo Luo1,Li Hongwei1,He Qing1

Affiliation:

1. Institute of Computing Technology, Chinese Academy of Sciences, China and University of Chinese Academy of Sciences, Beijing , China

2. University of California, Irvine, CA, USA

3. University of California, Los Angeles, CA, USA

Abstract

Frequent Episode Mining (FEM), which aims at mining frequent sub-sequences from a single long event sequence, is one of the essential building blocks for the sequence mining research field. Existing studies about FEM suffer from unsatisfied scalability when faced with complex sequences as it is an NP-complete problem for testing whether an episode occurs in a sequence. In this article, we propose a scalable, distributed framework to support FEM on “big” event sequences. As a rule of thumb, “big” illustrates an event sequence is either very long or with masses of simultaneous events. Meanwhile, the events in this article are arranged in a predefined hierarchy. It derives some abstractive events that can form episodes that may not directly appear in the input sequence. Specifically, we devise an event-centered and hierarchy-aware partitioning strategy to allocate events from different levels of the hierarchy into local processes. We then present an efficient special-purpose algorithm to improve the local mining performance. We also extend our framework to support maximal and closed episode mining in the context of event hierarchy, and to the best of our knowledge, we are the first attempt to define and discover hierarchy-aware maximal and closed episodes. We implement the proposed framework on Apache Spark and conduct experiments on both synthetic and real-world datasets. Experimental results demonstrate the efficiency and scalability of the proposed approach and show that we can find practical patterns when taking event hierarchies into account.

Funder

National Key Research and Development Program of China

National Natural Science Foundation of China

CCF-Tencent Rhino-Bird Young Faculty Open Research

Ant Financial through the Ant Financial Science Funds for Security Research

Youth Innovation Promotion Association CAS

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Theoretical Computer Science

Reference47 articles.

1. Pattern-growth based frequent serial episode discovery

2. A unified view of the a priori-based algorithms for frequent episode discovery;Achar Avinash;KAIS,2012

3. Discovering injective episodes with general partial orders

4. Xiang Ao Yang Liu Zhen Huang Luo Zuo and Qing He. 2018. Free-rider episode screening via dual partition model. In DASFAA. 665--683. Xiang Ao Yang Liu Zhen Huang Luo Zuo and Qing He. 2018. Free-rider episode screening via dual partition model. In DASFAA. 665--683.

5. Xiang Ao Ping Luo Chengkai Li Fuzhen Zhuang and Qing He. 2015. Online frequent episode mining. In ICDE. 891--902. Xiang Ao Ping Luo Chengkai Li Fuzhen Zhuang and Qing He. 2015. Online frequent episode mining. In ICDE. 891--902.

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