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Minimax Bounds for Structured Prediction Based on Factor Graphs

机译:基于因子图的结构预测的最小限度界限

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摘要

Structured prediction can be considered as a generalization of many standard supervised learning tasks, and is usually thought as a simultaneous prediction of multiple labels. One standard approach is to maximize a score function on the space of labels, which usually decomposes as a sum of unary and pairwise potentials, each depending on one or two specific labels, respectively.For this approach, several learning and inference algorithms have been proposed over the years, ranging from exact to approximate methods while balancing the computational complexity.However, in contrast to binary and multiclass classification, results on the necessary number of samples for achieving learning are still limited, even for a specific family of predictors such as factor graphs.In this work, we provide minimax lower bounds for a class of general factor-graph inference models in the context of structured prediction.That is, we characterize the necessary sample complexity for any conceivable algorithm to achieve learning of general factor-graph predictors.
机译:结构化预测可以被视为许多标准监督学习任务的概括,并且通常认为是同时预测多个标签。一个标准方法是最大化在标签空间上的得分函数,这通常分解为一定或两种特定标签的一定或两种特定标签。对于这种方法,已经提出了几种学习和推理算法多年来,在平衡计算复杂性的同时,从精确到近似方法。然而,与二进制和多字符分类相比,即使对于特定的预测因子(例如因子),仍然是有限的实现学习的样本数量的结果。图表。在结构预测的上下文中,我们为一类一般因子 - 图推断模型提供了最小的一般因子图推断模型。这是,我们表征了任何可想到的算法的必要样本复杂度,以实现一般因子图预测器的学习。

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