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Separate training for conditional random fields using co-occurrence rate factorization

机译:使用共现率分解对条件随机场进行单独训练

摘要

The standard training method of Conditional Random Fields (CRFs) is very slow for large-scale applications. As an alternative, piecewise training divides the full graph into pieces, trains them independently, and combines the learned weights at test time. In this paper, we present separate training for undirected models based on the novel Co-occurrence Rate Factorization (CR-F). Separate training is a local training method. In contrast to piecewise training, separate training is exact. In contrast to MEMMs, separate training is unaffected by the label bias problem. Experiments show that separate training (i) is unaffected by the label bias problem; (ii) reduces the training time from weeks to seconds; and (iii) obtains competitive results to the standard and piecewise training on linear-chain CRFs.
机译:对于大规模应用,条件随机场(CRF)的标准训练方法非常慢。作为一种替代方法,分段训练可以将整个图形分为多个部分,分别进行训练,并在测试时组合学习到的权重。在本文中,我们基于新颖的共现率因子分解(CR-F),提出了针对无向模型的单独训练。单独训练是一种本地训练方法。与分段训练相反,单独训练是精确的。与MEMM相反,单独的训练不受标签偏差问题的影响。实验表明,单独的训练(i)不受标签偏差问题的影响; (ii)将培训时间从几周减少到几秒钟; (iii)在线性链CRF的标准训练和分段训练中获得竞争性结果。

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