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Monte Carlo MCMC: Efficient Inference by Approximate Sampling

机译:蒙特卡洛MCMC:通过近似采样进行有效推断

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Conditional random fields and other graphical models have achieved state of the art results in a variety of tasks such as coreference, relation extraction, data integration, and parsing. Increasingly, practitioners are using models with more complex structure-higher tree-width, larger fan-out, more features, and more data-rendering even approximate inference methods such as MCMC inefficient. In this paper we propose an alternative MCMC sampling scheme in which transition probabilities are approximated by sampling from the set of relevant factors. We demonstrate that our method converges more quickly than a traditional MCMC sampler for both marginal and MAP inference. In an author coreference task with over 5 million mentions, we achieve a 13 times speedup over regular MCMC inference.
机译:条件随机字段和其他图形模型已经实现了最新的状态,导致各种任务,如Coreference,关系提取,数据集成和解析。从业者越来越多地使用具有更复杂的结构更高的树宽,更大的粉丝输出,更多功能以及更多的数据渲染甚至近似推理方法,例如MCMC效率的模型。在本文中,我们提出了一种替代的MCMC采样方案,其中通过从相关因子集中抽样来近似过渡概率。我们展示了我们的方法比传统的MCMC采样器更快地收敛,用于边缘和地图推断。在作者Coreference任务中有超过500万的提到,我们通过常规MCMC推断实现了13倍的加速。

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