联合事件提取方法研究以食品直播电子商务为导向

IF 5.9 3区 管理学 Q1 BUSINESS
DianHui Mao , YiMing Liu , RuiXuan Li , JunHua Chen , YuanRong Hao , JianWei Wu
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引用次数: 0

摘要

在食品电子商务直播不断发展的过程中,大量的文本数据,加上过多的宣传用语和非结构化格式,给事件提取带来了巨大的挑战。为了解决这些问题,我们引入了一种基于本体的定制方法,以及一种联合事件提取算法 FMLEE(食品营销直播事件提取)。这种方法通过细致的细分和开发包含 5 个事件类别和 19 个参数角色的本体,简化了事件识别过程。通过整合来自预训练语言模型的上下文感知嵌入,并应用对抗学习策略,我们的方法不仅增强了模型的鲁棒性,还大大提高了其在资源稀缺的食品直播促销环境中辨别相关事件的准确性。FMLEE 模型的有效性通过其 73.05% 的 F1 分数得到了验证,其中包含的对抗学习使其性能提高了 2.61%。这证明了我们在该领域的新贡献,为食品直播推广领域的信息优化利用提供了强大的技术支持。同时,这也有助于研究消费者参与营销战略和营销活动智能监管的创新应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on the joint event extraction method orientates food live e-commerce

In the evolving landscape of food e-commerce live streaming, the profusion of textual data, marked by an excess of promotional vernacular and unstructured formats, presents a formidable challenge for event extraction. Addressing these hurdles, we introduce a tailored ontology-based method alongside FMLEE (Food Marketing Live Event Extraction), a joint event extraction algorithm. This approach simplifies the event identification process through meticulous segmentation and the development of an ontology comprising 5 event categories and 19 argument roles. By integrating context-aware embeddings derived from pre-trained language models and applying an adversarial learning tactic, our methodology not only bolsters the robustness of our model but also significantly refines its accuracy in discerning relevant events within the scarce-resource milieu of food live streaming promotions. The effectiveness of the FMLEE model is validated by its achievement of an F1 score of 73.05%, with the inclusion of adversarial learning contributing to a 2.61% enhancement in performance. This evidences our novel contribution to the domain, offering robust technical support for the optimal exploitation of information within the sphere of food live streaming promotions. Simultaneously, this aids in the investigation of innovative applications for consumer engagement within marketing strategies and the smart regulation of marketing activities.

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来源期刊
Electronic Commerce Research and Applications
Electronic Commerce Research and Applications 工程技术-计算机:跨学科应用
CiteScore
10.10
自引率
8.30%
发文量
97
审稿时长
63 days
期刊介绍: Electronic Commerce Research and Applications aims to create and disseminate enduring knowledge for the fast-changing e-commerce environment. A major dilemma in e-commerce research is how to achieve a balance between the currency and the life span of knowledge. Electronic Commerce Research and Applications will contribute to the establishment of a research community to create the knowledge, technology, theory, and applications for the development of electronic commerce. This is targeted at the intersection of technological potential and business aims.
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