Uncertainty in big data analytics: survey, opportunities, and challenges

大数据 数据科学 计算机科学 数据分析 分析 社会化媒体 商业智能 可扩展性 软件分析 多样性(控制论) 领域(数学) 人工智能 数据挖掘 万维网 软件 数据库 软件建设 数学 软件系统 纯数学 程序设计语言
作者
Reihaneh H. Hariri,Erik M. Fredericks,Kate M. Bowers
出处
期刊:Journal of Big Data [Springer Science+Business Media]
卷期号:6 (1) 被引量:338
标识
DOI:10.1186/s40537-019-0206-3
摘要

Big data analytics has gained wide attention from both academia and industry as the demand for understanding trends in massive datasets increases. Recent developments in sensor networks, cyber-physical systems, and the ubiquity of the Internet of Things (IoT) have increased the collection of data (including health care, social media, smart cities, agriculture, finance, education, and more) to an enormous scale. However, the data collected from sensors, social media, financial records, etc. is inherently uncertain due to noise, incompleteness, and inconsistency. The analysis of such massive amounts of data requires advanced analytical techniques for efficiently reviewing and/or predicting future courses of action with high precision and advanced decision-making strategies. As the amount, variety, and speed of data increases, so too does the uncertainty inherent within, leading to a lack of confidence in the resulting analytics process and decisions made thereof. In comparison to traditional data techniques and platforms, artificial intelligence techniques (including machine learning, natural language processing, and computational intelligence) provide more accurate, faster, and scalable results in big data analytics. Previous research and surveys conducted on big data analytics tend to focus on one or two techniques or specific application domains. However, little work has been done in the field of uncertainty when applied to big data analytics as well as in the artificial intelligence techniques applied to the datasets. This article reviews previous work in big data analytics and presents a discussion of open challenges and future directions for recognizing and mitigating uncertainty in this domain.

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