Natural Language Processing and its applications in e-business

Gabriela Sousa
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Abstract

The advent of big data and the ability to extract insights from unstructured data has opened new avenues for companies. In this scientific article we have gathered different examples of application of Natural Language Processing (NLP) specifically in the electronic business environment. The main objective was to investigate what kind of analyzes and techniques are being used to extract knowledge from Big data, more concretly unstructured data, and within this type, textual data and what concrete applications derive from NLP in the context of e-business. Being NLP a type of Artificial Intelligence (AI) that uses Machine Learning (ML) and Deep Learning (DL) with the objective of developing a technology that learns, and takes decisions based on what it learned, it was important to understand what a ML workflow is like and therefore, the literatuere revision is very focused on this point. It was concluded that NLP is a complex process whose applications are diverse and relevant in the context of Electronic Business. Today, NLP is used to complete tasks such as text classification, content filtering, sentiment analysis, language modeling, translation, and summarization and applications such as chatbots, voice assistants and recommendation systems. In the future, it is expected that the NLP will have greater influence in different business areas such as the management of new products and recommendation systems; segmentation, segmentation and analysis of customers and users; brand positioning, communication and marketing; competitor analysis; and risk management, sustainability and social responsibility. Specialists in the area also believe that there will possibly be a paradigm shift in AI that will use Reinforcement Learning techniques, which will allow the development of more advanced, adaptive and multipurpose AI agents. It is also to be expected that humans and machines cohabit in a more collaborative way.
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自然语言处理及其在电子商务中的应用
大数据的出现以及从非结构化数据中提取见解的能力为企业开辟了新的途径。在这篇科学文章中,我们收集了自然语言处理(NLP)应用的不同例子,特别是在电子商务环境中。主要目的是调查从大数据(更具体地说是非结构化数据)中提取知识所使用的分析和技术类型,以及在这种类型中,文本数据,以及电子商务背景下NLP的具体应用。NLP是一种使用机器学习(ML)和深度学习(DL)的人工智能(AI),其目标是开发一种学习技术,并根据所学内容做出决策,了解ML工作流程是什么样的非常重要,因此,文献修订非常关注这一点。结论是,NLP是一个复杂的过程,在电子商务背景下,它的应用是多样的和相关的。如今,NLP被用于完成文本分类、内容过滤、情感分析、语言建模、翻译和摘要等任务,以及聊天机器人、语音助手和推荐系统等应用。未来,预计NLP将在新产品管理、推荐系统等不同业务领域产生更大的影响;细分,对客户和用户进行细分和分析;品牌定位、传播、营销;竞争对手分析;以及风险管理、可持续性和社会责任。该领域的专家还认为,人工智能可能会发生范式转变,将使用强化学习技术,这将允许开发更先进、自适应和多用途的人工智能代理。人们还期望人类和机器以一种更加协作的方式共存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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