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Decision tree based unsupervised learning to network selection in heterogeneous wireless networks

机译:基于决策树的非均质无线网络中的网络选择的无监督学习

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Network selection is one of key issues in the area of heterogeneous wireless networks. Actually there are lots of decision factors which are very useful for network selection. However, because the values of these decision factors belong to different types such as boolean, enumeration, discrete and continuous values, it is quite difficult to make use of these decision factors in traditional network selection approach. In this paper, network selection problem is formulated as an unsupervised learning problem. A decision tree based approach is then proposed to fully utilize the decision factors with different types to select network optimally.
机译:网络选择是异构无线网络领域的关键问题之一。实际上,有很多决策因子,对于网络选择非常有用。但是,由于这些决策因子的值属于不同类型,如布尔,枚举,离散和连续值,因此很难利用传统网络选择方法中的这些决策因素。在本文中,网络选择问题被制定为无监督的学习问题。然后提出基于决策树的方法来充分利用不同类型的决策因子来选择网络。

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