A Literature Review on Augmented Analytics and Natural Language Generation: A Review of State of Art Techniques, Opportunities and Challenges

Shivani Kania, Yesha Mehta
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Abstract

Augmented analytics is a type of analytics in which machine learning and artificial intelligence are used to provide users with more advanced and understandable analytical capabilities. Data preparation, analysis, and result interpretation are all automated steps in the analysis method. Natural language processing (NLP), automated data collection, machine learning, data visualization, explainable AI, and collaborative analytics are some of the techniques used in augmented analytics. The goal of augmented analytics technology is to simplify and modernize data analysis, making it more accessible to a wider variety of people and enabling improved decision-making across organizations. NLP is a branch of artificial intelligence (AI) and machine learning (ML) that studies the interactions between technology and people. The purpose of this study is to examine cutting-edge approaches in augmented analytics and natural language processing in order to create a sophisticated natural language generation model for augmented analytics data interpretation.
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关于增强分析和自然语言生成的文献综述:最新技术、机遇和挑战的综述
增强分析是一种利用机器学习和人工智能为用户提供更高级、更容易理解的分析能力的分析方法。数据准备、分析和结果解释都是分析方法中的自动化步骤。自然语言处理(NLP)、自动数据收集、机器学习、数据可视化、可解释的人工智能和协作分析是增强分析中使用的一些技术。增强分析技术的目标是简化和现代化数据分析,使其更容易被各种各样的人访问,并支持跨组织的改进决策。NLP是人工智能(AI)和机器学习(ML)的一个分支,研究技术与人之间的相互作用。本研究的目的是研究增强分析和自然语言处理的前沿方法,以便为增强分析数据解释创建一个复杂的自然语言生成模型。
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