Posthoc Interpretability of Learning to Rank Models using Secondary Training Data

June 29, 2018 Β· Declared Dead Β· πŸ› arXiv.org

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Authors Jaspreet Singh, Avishek Anand arXiv ID 1806.11330 Category cs.IR: Information Retrieval Citations 47 Venue arXiv.org Last Checked 4 months ago
Abstract
Predictive models are omnipresent in automated and assisted decision making scenarios. But for the most part they are used as black boxes which output a prediction without understanding partially or even completely how different features influence the model prediction avoiding algorithmic transparency. Rankings are ordering over items encoding implicit comparisons typically learned using a family of features using learning-to-rank models. In this paper we focus on how best we can understand the decisions made by a ranker in a post-hoc model agnostic manner. We operate on the notion of interpretability based on explainability of rankings over an interpretable feature space. Furthermore we train a tree based model (inherently interpretable) using labels from the ranker, called secondary training data to provide explanations. Consequently, we attempt to study how well does a subset of features, potentially interpretable, explain the full model under different training sizes and algorithms. We do experiments on the learning to rank datasets with 30k queries and report results that serve show in certain settings we can learn a faithful interpretable ranker.
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