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Understanding and personalising smart city services using machine learning, The Internet-of-Things and Big Data

机译:使用机器学习,物联网和大数据来理解和个性化智慧城市服务

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This paper explores the potential of Machine Learning (ML) and Artificial Intelligence (AI) to lever Internet of Things (IoT) and Big Data in the development of personalised services in Smart Cities. We do this by studying the performance of four well-known ML classification algorithms (Bayes Network (BN), Naïve Bayesian (NB), J48, and Nearest Neighbour (NN)) in correlating the effects of weather data (especially rainfall and temperature) on short journeys made by cyclists in London. The performance of the algorithms was assessed in terms of accuracy, trustworthy and speed. The data sets were provided by Transport for London (TfL) and the UK MetOffice. We employed a random sample of some 1,800,000 instances, comprising six individual datasets, which we analysed on the WEKA platform. The results revealed that there were a high degree of correlations between weather-based attributes and the Big Data being analysed. Notable observations were that, on average, the decision tree J48 algorithm performed best in terms of accuracy while the kNN IBK algorithm was the fastest to build models. Finally we suggest IoT Smart City applications that may benefit from our work.
机译:本文探讨了机器学习(ML)和人工智能(AI)在利用物联网(IoT)和大数据开发智能城市个性化服务方面的潜力。为此,我们通过研究四种著名的ML分类算法(贝叶斯网络(BN),朴素贝叶斯(NB),J48和最近邻(NN))的性能来关联天气数据(尤其是降雨和温度)的影响骑自行车的人在伦敦进行的短途旅行。从准确性,可信度和速度方面评估了算法的性能。数据集由伦敦运输局(TfL)和英国气象局提供。我们使用了大约1,800,000个实例的随机样本,包括六个单独的数据集,我们在WEKA平台上进行了分析。结果表明,基于天气的属性与所分析的大数据之间存在高度相关性。值得注意的观察结果是,就准确性而言,决策树J48算法平均表现最佳,而kNN IBK算法是建立模型最快的算法。最后,我们建议可以从我们的工作中受益的IoT Smart City应用程序。

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