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Structured Prediction Theory Based on Factor Graph Complexity

机译:基于因子图复杂性的结构化预测理论

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We present a general theoretical analysis of structured prediction with a series of new results. We give new data-dependent margin guarantees for structured prediction for a very wide family of loss functions and a general family of hypotheses, with an arbitrary factor graph decomposition. These are the tightest margin bounds known for both standard multi-class and general structured prediction problems. Our guarantees are expressed in terms of a data-dependent complexity measure, factor graph complexity, which we show can be estimated from data and bounded in terms of familiar quantities for several commonly used hypothesis sets along with a sparsity measure for features and graphs. Our proof techniques include generalizations of Talagrand's contraction lemma that can be of independent interest. We further extend our theory by leveraging the principle of Voted Risk Minimization (VRM) and show that learning is possible even with complex factor graphs. We present new learning bounds for this advanced setting, which we use to design two new algorithms, Voted Conditional Random Field (VCRF) and Voted Structured Boosting (StructBoost). These algorithms can make use of complex features and factor graphs and yet benefit from favorable learning guarantees. We also report the results of experiments with VCRF on several datasets to validate our theory.
机译:我们展示了一系列新结果的结构化预测的一般理论分析。对于一个非常广泛的损失函数和一般的假设系列,提供新的数据依赖保证保障,以及一般的假设系列,具有任意因子图分解。这些是标准多级和一般结构化预测问题所知的最紧密的边缘界限。我们的保证在于数据相关的复杂性度量来表示,我们所示的因子图复杂性可以从数据估计,并且在熟悉的数量方面涉及几个常用的假设集合以及特征和图表的稀疏度量。我们的证据技术包括Talagrand的收缩引理的概括,可以是独立利益的。我们通过利用投票风险最小化(VRM)的原则进一步扩展了我们的理论,并表明即使具有复杂的因子图,学习也是可能的。我们为此高级设置提供了新的学习范围,我们用于设计两个新的算法,投票的条件随机字段(VCRF)和投票的结构升压(Structboost)。这些算法可以利用复杂的特征和因子图,但尚未受益于有利的学习保证。我们还在几个数据集上报告了VCRF的实验结果,以验证我们的理论。

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