AIJun 7, 2021

Uncertain Process Data with Probabilistic Knowledge: Problem Characterization and Challenges

arXiv:2106.03324v114 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of integrating probabilistic data from sensors into process analysis, which is incremental as it builds on existing conformance checking methods.

The paper tackles the problem of conformance checking for uncertain event data with probabilistic knowledge, presenting three challenging cases that extend traditional techniques to handle stochastic process observations and models.

Motivated by the abundance of uncertain event data from multiple sources including physical devices and sensors, this paper presents the task of relating a stochastic process observation to a process model that can be rendered from a dataset. In contrast to previous research that suggested to transform a stochastically known event log into a less informative uncertain log with upper and lower bounds on activity frequencies, we consider the challenge of accommodating the probabilistic knowledge into conformance checking techniques. Based on a taxonomy that captures the spectrum of conformance checking cases under stochastic process observations, we present three types of challenging cases. The first includes conformance checking of a stochastically known log with respect to a given process model. The second case extends the first to classify a stochastically known log into one of several process models. The third case extends the two previous ones into settings in which process models are only stochastically known. The suggested problem captures the increasingly growing number of applications in which sensors provide probabilistic process information.

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