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Bankruptcy Prediction of Construction Businesses: Towards a Big Data Analytics Approach

机译:建筑业务的破产预测:迈向大数据分析方法

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Bankruptcy prediction models (BPMs) are needed by financiers like banks in order to check the credit worthiness of companies. A very robust model needs a very large amount of data with periodic updates (i.e. appending new data). Such size of data cannot be processed directly by the tools used in building BPMs, however Big Data Analytics offers the opportunity to analyse such data. With data sources like DataStream, FAME, Company House, etc. that hold large financial data of existing and failed firms, it is possible to extract huge financial data into Hadoop database (e.g. HBase), whilst allowing periodic appending of data from the data sources, and carry out a Big Data analysis using a machine learning tool on Apache Mahout. Lifelong machine learning can also be employed in order to avoid repeated intensive training of the model using all the data in the Hadoop database. A framework is thus proposed for developing a Big Data Analytics based BPM.
机译:金融家等破产预测模型(BPMS)是银行等银行所要求的,以检查公司的信誉。一个非常强大的模型需要具有周期性更新的非常大量的数据(即附加新数据)。在建筑物BPMS中使用的工具不能直接处理这种数据规模,但大数据分析提供了分析此类数据的机会。使用DataStream,Fame,Company House等数据来源,该数据来持有现有和失败的公司的大型财务数据,可以将庞大的财务数据提取到Hadoop数据库(例如HBase),同时允许从数据源上的数据安抚数据,使用Apache Mahout上的机器学习工具进行大数据分析。终身机器学习也可以使用,以避免使用Hadoop数据库中的所有数据重复对模型的重复培训。因此提出了一种用于开发基于BPM的大数据分析的框架。

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