Treffer: Learning Temporal Causal Sequence Relationships from Real-Time Time-Series.
Title:
Learning Temporal Causal Sequence Relationships from Real-Time Time-Series.
Authors:
Bruto da Costa, Antonio Anastasio1 ANTONIO@IITKGP.AC.IN, Dasgupta, Pallab1 PALLAB@CSE.IITKGP.AC.IN
Source:
Journal of Artificial Intelligence Research. 2021, Vol. 70, p205-243. 39p.
Subject Terms:
Database:
Supplemental Index
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We aim to mine temporal causal sequences that explain observed events (consequents) in time-series traces. Causal explanations of key events in a time-series have applications in design debugging, anomaly detection, planning, root-cause analysis and many more. We make use of decision trees and interval arithmetic to mine sequences that explain defining events in the time-series. We propose modified decision tree construction metrics to handle the non-determinism introduced by the temporal dimension. The mined sequences are expressed in a readable temporal logic language that is easy to interpret. The application of the proposed methodology is illustrated through various examples. [ABSTRACT FROM AUTHOR]