SEJun 8, 2018

An Integrated Framework for Process Discovery Algorithm Evaluation

arXiv:1806.07222v1
Originality Incremental advance
AI Analysis

This work addresses the need for better evaluation methods in process mining, offering a tool for benchmarking and sensitivity analysis, though it is incremental in improving existing frameworks.

The paper tackles the problem of evaluating process discovery algorithms by proposing an integrated framework that is modeling notation independent and based on experimental design for generalization, validated through an experiment with four algorithms and six characteristics.

Process mining offers techniques to exploit event data by providing insights and recommendations to improve business processes. The growing amount of algorithms for process discovery has raised the question of which algorithms perform best on a given event log. Current evaluation frameworks for empirically evaluating discovery techniques depend on the notation used (behavioral identical models may give different results) and cannot provide more general statements about populations of models. Therefore, this paper proposes a new integrated evaluation framework that uses a classification approach to make it modeling notation independent. Furthermore, it is founded on experimental design to ensure the generalization of results. It supports two main evaluation objectives: benchmarking process discovery algorithms and sensitivity analysis, i.e. studying the effect of model and log characteristics on a discovery algorithm's accuracy. The framework is designed as a scientific workflow which enables automated, extendable and shareable evaluation experiments. An extensive experiment including four discovery algorithms and six control-flow characteristics validates the relevance and flexibility of the framework. Ultimately, the paper aims to advance the state-of-the-art for evaluating process discovery techniques.

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