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Educational QA System-Oriented Answer Selection Model Based on Focus Fusion of Multi-Perspective Word Matching
by
Shou, Zhaoyu
, Hu, Xiaoli
, He, Junfei
, Liu, Ziming
, Zhang, Huibing
in
Algorithms
/ answer selection
/ Cognition & reasoning
/ Computational linguistics
/ Deep learning
/ key information
/ Knowledge acquisition
/ Language
/ Language processing
/ Large language models
/ Machine learning
/ Matching
/ matching focus
/ Matching theory
/ Methods
/ multi-perspective
/ Natural language interfaces
/ question answering (QA) system
/ Question-answering systems
/ Questions
/ Reading comprehension
/ Semantics
/ Sentences
2025
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Educational QA System-Oriented Answer Selection Model Based on Focus Fusion of Multi-Perspective Word Matching
by
Shou, Zhaoyu
, Hu, Xiaoli
, He, Junfei
, Liu, Ziming
, Zhang, Huibing
in
Algorithms
/ answer selection
/ Cognition & reasoning
/ Computational linguistics
/ Deep learning
/ key information
/ Knowledge acquisition
/ Language
/ Language processing
/ Large language models
/ Machine learning
/ Matching
/ matching focus
/ Matching theory
/ Methods
/ multi-perspective
/ Natural language interfaces
/ question answering (QA) system
/ Question-answering systems
/ Questions
/ Reading comprehension
/ Semantics
/ Sentences
2025
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Educational QA System-Oriented Answer Selection Model Based on Focus Fusion of Multi-Perspective Word Matching
by
Shou, Zhaoyu
, Hu, Xiaoli
, He, Junfei
, Liu, Ziming
, Zhang, Huibing
in
Algorithms
/ answer selection
/ Cognition & reasoning
/ Computational linguistics
/ Deep learning
/ key information
/ Knowledge acquisition
/ Language
/ Language processing
/ Large language models
/ Machine learning
/ Matching
/ matching focus
/ Matching theory
/ Methods
/ multi-perspective
/ Natural language interfaces
/ question answering (QA) system
/ Question-answering systems
/ Questions
/ Reading comprehension
/ Semantics
/ Sentences
2025
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Educational QA System-Oriented Answer Selection Model Based on Focus Fusion of Multi-Perspective Word Matching
Journal Article
Educational QA System-Oriented Answer Selection Model Based on Focus Fusion of Multi-Perspective Word Matching
2025
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Overview
Question-answering systems have become an important tool for learning and knowledge acquisition. However, current answer selection models often rely on representing features using whole sentences, which leads to neglecting individual words and losing important information. To address this challenge, the paper proposes a novel answer selection model based on focus fusion of multi-perspective word matching. First, according to the different combination relationships between sentences, focus distribution in terms of words is obtained from the matching perspectives of serial, parallel, and transfer. Then, the sentence’s key position information is inferred from its focus distribution. Finally, a method of aligning key information points is designed to fuse the focus distribution for each perspective, which obtains match scores for each candidate answer to the question. Experimental results show that the proposed model significantly outperforms the Transformer encoder fine-tuned model based on contextual embedding, achieving a 4.07% and 5.51% increase in MAP and a 1.63% and 4.86% increase in MRR, respectively.
Publisher
MDPI AG
Subject
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