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

机译:大数据分析的不确定性:调查,机遇和挑战

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Abstract 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.
机译:摘要随着对海量数据集中的趋势的理解需求的增加,大数据分析受到了学术界和行业的广泛关注。传感器网络,网络物理系统和物联网(IoT)的普及性的最新发展已将数据收集(包括医疗保健,社交媒体,智能城市,农业,金融,教育等)增加了巨大的规模。但是,由于噪声,不完整和不一致,从传感器,社交媒体,财务记录等收集的数据固有地不确定。对如此大量数据的分析需要先进的分析技术,以便以高精度和先进的决策策略有效地审查和/或预测未来的行动方针。随着数据量,种类和速度的增加,内部固有的不确定性也随之增加,从而导致对结果分析过程及其决策缺乏信心。与传统的数据技术和平台相比,人工智能技术(包括机器学习,自然语言处理和计算智能)在大数据分析中提供了更准确,更快和可扩展的结果。先前对大数据分析进行的研究和调查倾向于集中于一种或两种技术或特定的应用领域。但是,在将不确定性应用于大数据分析以及应用于数据集的人工智能技术方面,所做的工作很少。本文回顾了大数据分析方面的先前工作,并提出了有关识别和缓解该领域不确定性的开放挑战和未来方向的讨论。

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