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Novel algorithm to measure consistency between extracted models from big dataset and predicting applicability of rule extraction

机译:从大数据集中提取模型中提取模型的一致性的新算法,预测规则提取的应用

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Many advancement is made in recent days and number of techniques are proposed by different researchers for processing and extracting knowledge from big data. But to evaluate the consistency in extracted model is always questionable. In this paper we are presenting two techniques for measuring the consistency between extracted model and predicting their applicability. In this paper, Meta learning based approach using characteristics of dataset is designed through which it can be identified whether the rule extraction technique will going to produce a better model as compare to conventional algorithm. Meta learning is concerned to identify the relationship between learning techniques and different big datasets. The proposed model is very generic and can be used in many different problems.
机译:最近几天进行了许多进步,不同的研究人员提出了技术的数量,用于从大数据处理和提取知识。 但要评估提取的模型中的一致性始终如一。 在本文中,我们正在提出两种用于测量提取模型与预测其适用性之间的一致性的技术。 在本文中,设计了使用数据集特性的META学习方法,可以通过该方法通过该方法,可以通过该方法来识别规则提取技术是否将产生更好的模型,与传统算法相比。 元学习旨在识别学习技术与不同大数据集之间的关系。 所提出的模型非常通用,可以在许多不同的问题中使用。

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