TU Wien @ TREC Deep Learning '19 -- Simple Contextualization for Re-ranking

December 03, 2019 Β· Declared Dead Β· πŸ› Text Retrieval Conference

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Authors Sebastian HofstΓ€tter, Markus Zlabinger, Allan Hanbury arXiv ID 1912.01385 Category cs.IR: Information Retrieval Cross-listed cs.CL Citations 15 Venue Text Retrieval Conference Last Checked 4 months ago
Abstract
The usage of neural network models puts multiple objectives in conflict with each other: Ideally we would like to create a neural model that is effective, efficient, and interpretable at the same time. However, in most instances we have to choose which property is most important to us. We used the opportunity of the TREC 2019 Deep Learning track to evaluate the effectiveness of a balanced neural re-ranking approach. We submitted results of the TK (Transformer-Kernel) model: a neural re-ranking model for ad-hoc search using an efficient contextualization mechanism. TK employs a very small number of lightweight Transformer layers to contextualize query and document word embeddings. To score individual term interactions, we use a document-length enhanced kernel-pooling, which enables users to gain insight into the model. Our best result for the passage ranking task is: 0.420 MAP, 0.671 nDCG, 0.598 P@10 (TUW19-p3 full). Our best result for the document ranking task is: 0.271 MAP, 0.465 nDCG, 0.730 P@10 (TUW19-d3 re-ranking).
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