Argumentation for Explainable Scheduling (Full Paper with Proofs)
November 13, 2018 Β· Declared Dead Β· π AAAI Conference on Artificial Intelligence
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Authors
Kristijonas Δyras, Dimitrios Letsios, Ruth Misener, Francesca Toni
arXiv ID
1811.05437
Category
cs.AI: Artificial Intelligence
Citations
27
Venue
AAAI Conference on Artificial Intelligence
Last Checked
4 months ago
Abstract
Mathematical optimization offers highly-effective tools for finding solutions for problems with well-defined goals, notably scheduling. However, optimization solvers are often unexplainable black boxes whose solutions are inaccessible to users and which users cannot interact with. We define a novel paradigm using argumentation to empower the interaction between optimization solvers and users, supported by tractable explanations which certify or refute solutions. A solution can be from a solver or of interest to a user (in the context of 'what-if' scenarios). Specifically, we define argumentative and natural language explanations for why a schedule is (not) feasible, (not) efficient or (not) satisfying fixed user decisions, based on models of the fundamental makespan scheduling problem in terms of abstract argumentation frameworks (AFs). We define three types of AFs, whose stable extensions are in one-to-one correspondence with schedules that are feasible, efficient and satisfying fixed decisions, respectively. We extract the argumentative explanations from these AFs and the natural language explanations from the argumentative ones.
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