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When Collective Knowledge Meets Crowd Knowledge in a Smart City: A Prediction Method Combining Open Data Keyword Analysis and Case-Based Reasoning

机译:当集体知识符合智能城市中的人群知识时:一种预测方法,结合了开放数据关键词分析和基于案例的推理

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摘要

One of the significant issues in a smart city is maintaining a healthy environment. To improve the environment, huge amounts of data are gathered, manipulated, analyzed, and utilized, and these data might include noise, uncertainty, or unexpected mistreatment of the data. In some datasets, the class imbalance problem skews the learning performance of the classification algorithms. In this paper, we propose a case-based reasoning method that combines the use of crowd knowledge from open source data and collective knowledge. This method mitigates the class imbalance issues resulting from datasets, which diagnose wellness levels in patients suffering from stress or depression. We investigate effective ways to mitigate class imbalance issues in which the datasets have a higher proportion of one class over another. The results of this proposed hybrid reasoning method, using a combination of crowd knowledge extracted from open source data (i.e., a Google search, or other publicly accessible source) and collective knowledge (i.e., case-based reasoning), were that it performs better than other traditional methods (e.g., SMO, BayesNet, IBk, Logistic, C4.5, and crowd reasoning). We also demonstrate that the use of open source and big data improves the classification performance when used in addition to conventional classification algorithms.
机译:智能城市中的一个重要问题是保持健康的环境。为了改进环境,收集大量数据,被操纵,分析和利用,这些数据可能包括噪声,不确定性或数据意外误解。在某些数据集中,类别不平衡问题会偏斜分类算法的学习性能。在本文中,我们提出了一种基于案例的推理方法,将人群知识与开源数据和集体知识相结合。该方法减轻了由数据集产生的类别不平衡问题,其诊断患有压力或抑郁症的患者的健康水平。我们调查了减轻类别不平衡问题的有效方法,其中数据集比另一个级别比例更高。这种提出的混合推理方法的结果,使用从开源数据提取的人群知识(即,谷歌搜索或其他可公开可访问的来源)和集体知识(即基于案例的推理)的组合,是它表现更好而不是其他传统方法(例如,SMO,Bayesnet,IBK,Logistic,C4.5和Crowd推理)。我们还证明,除了传统分类算法之外,使用开源和大数据的使用可以提高分类性能。

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