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Retrieving Comparative Arguments using Ensemble Methods and Neural Information Retrieval

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arxiv 2305.01513 v1 pith:J2IZHJNU submitted 2023-05-01 cs.IR

Retrieving Comparative Arguments using Ensemble Methods and Neural Information Retrieval

classification cs.IR
keywords comparativerankingretrievalensemblesfeaturesinformationlibrarymodelling
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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In this paper, we present a submission to the Touche lab's Task 2 on Argument Retrieval for Comparative Questions. Our team Katana supplies several approaches based on decision tree ensembles algorithms to rank comparative documents in accordance with their relevance and argumentative support. We use PyTerrier library to apply ensembles models to a ranking problem, considering statistical text features and features based on comparative structures. We also employ large contextualized language modelling techniques, such as BERT, to solve the proposed ranking task. To merge this technique with ranking modelling, we leverage neural ranking library OpenNIR. Our systems substantially outperforming the proposed baseline and scored first in relevance and second in quality according to the official metrics of the competition (for measure NDCG@5 score). Presented models could help to improve the performance of processing comparative queries in information retrieval and dialogue systems.

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