Maofu Liu

Also published as: 茂福


2025

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Exploiting Phonetics and Glyph Representation at Radical-level for Classical Chinese Understanding
Junyi Xiang | Maofu Liu
Findings of the Association for Computational Linguistics: ACL 2025

The diachronic gap between classical and modern Chinese arises from century-scale language evolution through cumulative changes in phonological, syntactic, and lexical systems, resulting in substantial semantic variation that poses significant challenges for the computational modeling of historical texts. Current methods always enhance classical Chinese understanding of pre-trained language models through corpus pre-training or semantic integration. However, they overlook the synergistic relationship between phonetic and glyph features within Chinese characters, which is a critical factor in deciphering characters’ semantics. In this paper, we propose RPGCM, a radical-level phonetics and glyph representation enhanced Chinese model, with powerful fine-grained semantic modeling capabilities. Our model establishes robust contextualized representations through: (1) rules-based radical decomposition and bype pair encoder (BPE) based radical aggregated for structural pattern recognition, (2) phonetic-glyph semantic mapping, and (3) dynamic semantic fusion. Experimental results on CCMRC, WYWEB, and C³Bench benchmarks demonstrate the RPGCM’s superiority and validate that explicit radical-level modeling effectively mitigates semantic variations.

2020

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基于BERTCA的新闻实体与正文语义相关度计算模型(Semantic Relevance Computing Model of News Entity and Text based on BERTCA)
Junyi Xiang (向军毅) | Huijun Hu (胡慧君) | Ruibin Mao (毛瑞彬) | Maofu Liu (刘茂福)
Proceedings of the 19th Chinese National Conference on Computational Linguistics

目前的搜索引擎仍然存在“重形式,轻语义”的问题,无法做到对搜索关键词和文本的深层次语义理解,因此语义检索成为当代搜索引擎中亟需解决的问题。为了提高搜索引擎的语义理解能力,提出一种语义相关度的计算方法。首先标注金融类新闻标题实体与新闻正文语义相关度语料1万条,然后建立新闻实体与正文语义相关度计算的BERTCA(Bidirectional Encoder Representation from Transformers Co-Attention)模型,通过使用BERT预训练模型,综合考虑细粒度的实体和粗粒度的正文的语义信息,然后经过协同注意力,实现实体与正文的语义匹配,不仅能计算出金融新闻实体与新闻正文之间的相关度,还能根据相关度阈值来判定相关度类别,实验表明该模型在1万条标注语料上准确率超过95%,优于目前主流模型,最后通过具体搜索示例展现该模型的优秀性能。

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基于BiLSTM-CRF的社会突发事件研判方法(Social Emergency Event Judgement based on BiLSTM-CRF)
Huijun Hu (胡慧君) | Cong Wang (王聪) | Jianhua Dai (代建华) | Maofu Liu (刘茂福)
Proceedings of the 19th Chinese National Conference on Computational Linguistics

社会突发事件的分类和等级研判作为应急处置中的一环,其重要性不言而喻。然而,目前研究多数采用人工或规则的方法识别证据进行研判,由于社会突发事件的构成的复杂性和语言描述的灵活性,这对于研判证据识别有很大局限性。本文参考“事件抽取”思想,事件类型和研判证据作为事件中元素,以BiLSTM-CRF方法细粒度的识别,并将二者结合,分类结果作为等级研判的输入,识别出研判证据。最终将识别结果结合注意力机制进行等级研判,通过对研判证据的精准识别从而来增强等级研判的准确性。实验表明,相比人工或规则识别研判证据,本文提出的方法有着更好的鲁棒性,社会突发事件研判时也达到了较好的效果。 关键词:事件分类 ;研判证据识别 ;等级研判 ;BiLSTM-CRF

2009

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Document Re-ranking via Wikipedia Articles for Definition/Biography Type Questions
Maofu Liu | Fang Fang | Donghong Ji
Proceedings of the 23rd Pacific Asia Conference on Language, Information and Computation, Volume 2

2007

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Extractive Summarization Based on Event Term Clustering
Maofu Liu | Wenjie Li | Mingli Wu | Qin Lu
Proceedings of the 45th Annual Meeting of the Association for Computational Linguistics Companion Volume Proceedings of the Demo and Poster Sessions