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TraceWalk: Semantic-based Process Graph Embedding for Consistency Checking

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arxiv 1905.06883 v1 pith:MSAFVGNY submitted 2019-05-16 cs.CL cs.AI

TraceWalk: Semantic-based Process Graph Embedding for Consistency Checking

classification cs.CL cs.AI
keywords processcheckingconsistenciesconsistencytracewalkaboveaccuracyaccurately
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Process consistency checking (PCC), an interdiscipline of natural language processing (NLP) and business process management (BPM), aims to quantify the degree of (in)consistencies between graphical and textual descriptions of a process. However, previous studies heavily depend on a great deal of complex expert-defined knowledge such as alignment rules and assessment metrics, thus suffer from the problems of low accuracy and poor adaptability when applied in open-domain scenarios. To address the above issues, this paper makes the first attempt that uses deep learning to perform PCC. Specifically, we proposed TraceWalk, using semantic information of process graphs to learn latent node representations, and integrates it into a convolutional neural network (CNN) based model called TraceNet to predict consistencies. The theoretical proof formally provides the PCC's lower limit and experimental results demonstrate that our approach performs more accurately than state-of-the-art baselines.

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