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Semantic Matching Efficiency of Supply and Demand Text on Cross-Border E-Commerce Online Technology Trading Platforms

机译:跨境电子商务在线技术交易平台的供需文本的语义匹配效率

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With the innovation of global trade business models, more and more foreign trade companies are transforming and developing in the direction of cross-border e-commerce. However, due to the limitation of platform language processing and analysis technology, foreign trade companies encounter many bottlenecks in the process of transformation and upgrading. From the perspective of the semantic matching efficiency of e-commerce platforms, this paper improves the logical and technical problems of cross-border e-commerce in the operation process and uses semantic matching efficiency as the research object to conduct experiments on the QQP dataset. We propose a graph network text semantic analysis model TextSGN based on semantic dependency analysis for the problem that the existing text semantic matching method does not consider the semantic dependency information between words in the text and requires a large amount of training data. The model first analyzes the semantic dependence of the text and performs word embedding and one-hot encoding on the nodes (single words) and edges (dependencies) in the semantic dependence graph. On this basis, in order to quickly mine semantic dependencies, an SGN network block is proposed. The network block defines the way of information transmission from the structural level to update the nodes and edges in the graph, thereby quickly mining semantics dependent information allows the network to converge faster, train classification models on multiple public datasets, and perform classification tests. The experimental results show that the accuracy rate of TextSGN model in short text classification reaches 95.2%, which is 3.6% higher than the suboptimal classification method; the accuracy rate is 86.16%, the value is 88.77%, and the result is better than other methods.
机译:随着全球贸易商业模式的创新,越来越多的外贸公司正在转变和发展跨境电子商务的方向。但是,由于平台语言处理和分析技术的限制,外贸公司遇到了在转型和升级过程中的许多瓶颈。从电子商务平台的语义匹配效率的角度来看,本文提高了运行过程中跨境电子商务的逻辑和技术问题,并使用语义匹配效率作为研究对象对QQP数据集进行实验。我们提出了一种基于语义依赖性分析的图网络文本语义分析模型TextSgn,因为现有文本语义匹配方法不考虑文本中的单词之间的语义依赖信息并且需要大量的训练数据。该模型首先分析文本的语义依赖性,并在语义依赖图中对节点(单个单词)和边缘(依赖性)执行字嵌入和单个热编码。在此基础上,为了快速挖掘语义依赖性,提出了一个SGN网络块。网络块定义了从结构级别的信息传输方式,以更新图中的节点和边,从而快速挖掘语义依赖信息允许网络在多个公共数据集上汇总,列车分类模型,并执行分类测试。实验结果表明,短文本分类中文本模型的准确率达到95.2%,比次优分类方法高3.6%;精度率为86.16%,该值为88.77%,结果优于其他方法。

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