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Decision tree fields to map dataset content to a set of parameters

机译:决策树字段,用于将数据集内容映射到一组参数

摘要

A tractable model solves certain labeling problems by providing potential functions having arbitrary dependencies upon an observed dataset (e.g., image data). The model uses decision trees corresponding to various factors to map dataset content to a set of parameters used to define the potential functions in the model. Some factors define relationships among multiple variable nodes. When making label predictions on a new dataset, the leaf nodes of the decision tree determine the effective weightings for such potential functions. In this manner, decision trees define non-parametric dependencies and can represent rich, arbitrary functional relationships if sufficient training data is available. Decision trees training is scalable, both in the training set size and by parallelization. Maximum pseudolikelihood learning can provide for joint training of aspects of the model, including feature test selection and ordering, factor weights, and the scope of the interacting variable nodes used in the graph.
机译:易于处理的模型通过提供对观察到的数据集(例如,图像数据)具有任意依赖性的潜在函数来解决某些标记问题。该模型使用与各种因素相对应的决策树将数据集内容映射到用于定义模型中潜在功能的一组参数。一些因素定义了多个变量节点之间的关系。在新数据集上进行标签预测时,决策树的叶节点确定此类潜在函数的有效权重。以这种方式,如果有足够的训练数据,决策树将定义非参数依赖性,并且可以表示丰富的任意功能关系。决策树训练在训练集大小和并行化方面都是可扩展的。最大伪似然学习可以为模型的各个方面提供联合训练,包括特征测试选择和排序,因子权重以及图中使用的交互变量节点的范围。

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