{"title":"Causal relationship recognition algorithm based on external semantic and contextual structural features","authors":"Jiaxin Li, Kai Shuang","doi":"10.61935/acetr.2.1.2024.p1","DOIUrl":null,"url":null,"abstract":"Identifying the causal relationship of events plays an important role in determining the development of known events and evaluating the possible outcomes of different decisions. At present, neural network models are widely used to identify the relationships between events. Based on obtaining events, researchers distinguish the relationships between events by mining their semantics. However, due to the complexity of events and the dynamic changes in relationships between events, models often cannot fully meet the needs of accurately identifying causal relationships by only learning simple event descriptions in sentences; Moreover, focusing too much on the events themselves often leads to neglecting the structural features of statements and neglecting the impact of specific structural patterns on the relationships between events. In this article, we propose an event masking algorithm that combines external semantics to address the aforementioned issues. In this algorithm, external semantics are first introduced into the statement to enrich the information behind the event, allowing the model to mine the deep connections between events through a wider range of background knowledge; Then, the event masking module is used to enhance the model's extraction of sentence structured features, mining specific contextual representations that are unrelated to the event. The results show that compared to existing neural network algorithms, the algorithm proposed in this paper improves the F1 value of predictions on publicly available datasets by more than 4%.","PeriodicalId":503577,"journal":{"name":"Advances in Computer and Engineering Technology Research","volume":"4 9","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-02-27","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Advances in Computer and Engineering Technology Research","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.61935/acetr.2.1.2024.p1","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Identifying the causal relationship of events plays an important role in determining the development of known events and evaluating the possible outcomes of different decisions. At present, neural network models are widely used to identify the relationships between events. Based on obtaining events, researchers distinguish the relationships between events by mining their semantics. However, due to the complexity of events and the dynamic changes in relationships between events, models often cannot fully meet the needs of accurately identifying causal relationships by only learning simple event descriptions in sentences; Moreover, focusing too much on the events themselves often leads to neglecting the structural features of statements and neglecting the impact of specific structural patterns on the relationships between events. In this article, we propose an event masking algorithm that combines external semantics to address the aforementioned issues. In this algorithm, external semantics are first introduced into the statement to enrich the information behind the event, allowing the model to mine the deep connections between events through a wider range of background knowledge; Then, the event masking module is used to enhance the model's extraction of sentence structured features, mining specific contextual representations that are unrelated to the event. The results show that compared to existing neural network algorithms, the algorithm proposed in this paper improves the F1 value of predictions on publicly available datasets by more than 4%.
识别事件的因果关系在确定已知事件的发展和评估不同决策的可能结果方面发挥着重要作用。目前,神经网络模型被广泛用于识别事件之间的关系。在获取事件的基础上,研究人员通过挖掘事件的语义来区分事件之间的关系。然而,由于事件的复杂性和事件间关系的动态变化,仅学习句子中简单的事件描述,模型往往不能完全满足准确识别因果关系的需要;而且,过于关注事件本身往往会导致忽略语句的结构特征,忽视特定结构模式对事件间关系的影响。在本文中,我们提出了一种结合外部语义的事件掩码算法来解决上述问题。在该算法中,首先在语句中引入外部语义,丰富事件背后的信息,使模型能够通过更广泛的背景知识挖掘事件之间的深层联系;然后,利用事件掩蔽模块加强模型对句子结构特征的提取,挖掘与事件无关的特定语境表征。结果表明,与现有的神经网络算法相比,本文提出的算法在公开数据集上的预测 F1 值提高了 4% 以上。