Higher-order Lexical Semantic Models for Non-factoid Answer Reranking

Author:

Fried Daniel1,Jansen Peter1,Hahn-Powell Gustave1,Surdeanu Mihai1,Clark Peter2

Affiliation:

1. University of Arizona, Tucson, AZ, USA,

2. Allen Institute for Artificial Intelligence, Seattle, WA, USA,

Abstract

Lexical semantic models provide robust performance for question answering, but, in general, can only capitalize on direct evidence seen during training. For example, monolingual alignment models acquire term alignment probabilities from semi-structured data such as question-answer pairs; neural network language models learn term embeddings from unstructured text. All this knowledge is then used to estimate the semantic similarity between question and answer candidates. We introduce a higher-order formalism that allows all these lexical semantic models to chain direct evidence to construct indirect associations between question and answer texts, by casting the task as the traversal of graphs that encode direct term associations. Using a corpus of 10,000 questions from Yahoo! Answers, we experimentally demonstrate that higher-order methods are broadly applicable to alignment and language models, across both word and syntactic representations. We show that an important criterion for success is controlling for the semantic drift that accumulates during graph traversal. All in all, the proposed higher-order approach improves five out of the six lexical semantic models investigated, with relative gains of up to +13% over their first-order variants.

Publisher

MIT Press - Journals

Cited by 9 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Ranking facts for explaining answers to elementary science questions;Natural Language Engineering;2022-01-24

2. A survey on non-factoid question answering systems;International Journal of Computers and Applications;2021-07-12

3. Integrate Candidate Answer Extraction with Re-Ranking for Chinese Machine Reading Comprehension;Entropy;2021-03-08

4. Semantic Enrichment for Non-factoid Question Answering;Algorithms for Intelligent Systems;2021

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