以英语和俄语材料为例,介绍在数字商品(手机)领域的销售话语中建立成功聊天机器人交流的方法

A. A. Smirnova
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引用次数: 0

摘要

导 言近十年来,数字化进程积极渗透到现代人的生活中。各种形式和格式的人工智能为交流过程创造了新的语言知识。通过在各种类型的网络话语中创造新的语音交互特征和规则,通过聊天机器人建立的语音行为要取得成功,仍然存在不可克服的问题。这一问题在广告和公关领域尤为突出,因为与目标审计员和目标公众群体的沟通是实现公司目标的最重要工具之一。有必要对聊天机器人交流的有效性和潜力进行初步评估。使用语言建模的方法,可以为人与聊天机器人之间的成功互动创造条件并制定一定的 "规则"。为了创建俄语和英语领域的模型,有必要进行框架分析,并构建在广告话语中占主导地位的概念,或者说其种类:数字商品(手机)领域的销售话语。为此,有必要对文本进行语料库分析:将对独立收集的语料库中的口头和书面讲话文本进行分析,并对 NOW 语料库(英语-语群)和 NCRL 中的样本结果进行分析。此外,为了编制模型,还需要进行交流和转换分析。作为研究结果,文章不仅提出了在数字商品(手机)领域的销售话语中发挥作用的可能交流模式,以及引导最大数量的语音联系取得成功的交流模式,还提出了在其他话语中解析聊天机器人交流的通用算法。在研究过程中,英语和俄语模式在聊天机器人交流中取得语音成功方面存在显著差异的假设得到了证实。从特定话语的角度更新交流模式,并通过两种语言的材料对研究数据进行比较,这将有助于确定每个领域的异同,并确保在商业环境中通过聊天机器人提高交流过程的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Methods for Building Successful chatbot Communication in the Discourse of Sales in the Field of Digital Goods (Mobile Phones) on the Example of English and Russian Language Materials
Introduction. Digitalization processes have been actively penetrating the life of a modern person in the last decade. Artificial intelligence in various forms and formats creates new linguistic knowledge about the communication process. By creating new features and rules of speech interaction in various types of network discourse, the problems of achieving the success of speech acts built through chatbots remain ineradicable. This problem is especially acute in the field of advertising and PR, where communication with target auditors and target groups of the public is one of the most important tools for achieving the company's goals.Methodology and sources. A preliminary assessment of the effectiveness and potential of chatbot communication necessitates this. Using the method of linguistic modeling, you can create conditions and prescribe certain “rules” for successful interaction between a person and a chatbot. To create models for the Russian-speaking and English-speaking spheres, it is necessary to conduct a frame analysis and construct concepts of concepts that dominate in advertising discourse, or rather its variety: the discourse of sales in the field of digital goods (cell phones). To do this, it is necessary to conduct a corpus analysis of texts: the texts of oral and written speech in the corpus collected independently will be analyzed, and the results of the sample in the NOW corpora (in English-corpora) and NCRL will be analyzed. Also, for the compilation of models, communication and conversion analyzes will be required.Results and discussion. As a result of the study, the article presents not only possible communication models that function in the discourse of sales in the field of digital goods (cell phones), as well as leading the greatest number of speech contacts to success, but also a universal algorithm for parsing chatbot communication in other discourses. In the course of the study, it was possible to obtain confirmation of the assumption of a significant difference between the English-language and Russian-language models of achieving speech success in chatbot communication.Conclusion. Preparation of a communication model updated from the point of view of a certain discourse and comparison of research data through the materials of two languages will help to identify similarities and differences for each area, and, among other things, will ensure an increase in the efficiency of the communication process built through chatbots in a business environment.
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