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A computational model for refining Data domains in the property reconciliation

机译:用于炼制数据域中的计算模型

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A computational model for refining of data domains which are selected out in the property recognition over the Big Data sources is developed and considered. Data sources can originate both from natural and/or human activities. Thus discovered in a problem domain data objects - the individuals, - are considered as processes in a mathematical sense depending on parameters. The proposed parametrization is based on two-dimensional model using cross-referencing over assignments/crowdsoucers and recognizable properties/domains and is aimed to support the iteration procedure. This gives rise to the computational model based on the variable domains assumption. Such a vision is able to take into account the interaction of crowdsourcers and properties when they are varying with the evolving the events. The property recognition stage-by-stage model enables the fine tuning of the target data domains and has the representable functor. This model as may be shown is faithfully embedded into a category of indexed sets. The proposed (f, g)-tuning of the data domains leads to a neighborhood structure for cognition activity and gives a flexible computing model.
机译:开发并考虑在大数据源上识别中选择的数据域的计算模型。数据源可以来自自然和/或人类活动。因此,在问题域数据对象中被发现 - 个人, - 根据参数被视为数学意义的过程。所提出的参数化基于二维模型,使用交叉引用在分配/众群器和可识别的属性/域中,旨在支持迭代过程。这引发了基于可变域假设的计算模型。这种愿景能够考虑众群人和性质的互动,当它们随着演变事件而变化时。属性识别级模型可以精细调整目标数据域并具有可表示的仿函数。可以显示的该模型忠实地嵌入到索引集中。所提出的(f,g) - 对数据域的监测导致认知活动的邻域结构,并提供灵活的计算模型。

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