ACCBench: A Framework for Comparing Causality Algorithms
October 10, 2017 Β· Declared Dead Β· π CREST
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Authors
Simon Rehwald, Amjad Ibrahim, Kristian Beckers, Alexander Pretschner
arXiv ID
1710.05720
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.PF,
cs.SE
Citations
2
Venue
CREST
Last Checked
4 months ago
Abstract
Modern socio-technical systems are increasingly complex. A fundamental problem is that the borders of such systems are often not well-defined a-priori, which among other problems can lead to unwanted behavior during runtime. Ideally, unwanted behavior should be prevented. If this is not possible the system shall at least be able to help determine potential cause(s) a-posterori, identify responsible parties and make them accountable for their behavior. Recently, several algorithms addressing these concepts have been proposed. However, the applicability of the corresponding approaches, specifically their effectiveness and performance, is mostly unknown. Therefore, in this paper, we propose ACCBench, a benchmark tool that allows to compare and evaluate causality algorithms under a consistent setting. Furthermore, we contribute an implementation of the two causality algorithms by GΓΆΓler and Metayer and GΓΆΓler and Astefanoaei as well as of a policy compliance approach based on some concepts of Main et al. Lastly, we conduct a case study of an Intelligent Door Control System, which exposes concrete strengths and weaknesses of all algorithms under different aspects. In the course of this, we show that the effectiveness of the algorithms in terms of cause detection as well as their performance differ to some extent. In addition, our analysis reports on some qualitative aspects that should be considered when evaluating each algorithm. For example, the human effort needed to configure the algorithm and model the use case is analyzed.
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