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STACKED CONDITIONAL RANDOM FIELDS EXPLOITING STRUCTURAL CONSISTENCIES

机译:堆积条件随机字段利用结构常规

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Conditional Random Fields (CRF) are popular methods for labeling unstructured or textual data. Like many machine learning approaches these undirected graphical models assume the instances to be independently distributed. However, in real world applications data is grouped in a natural way, e.g., by its creation context. The instances in each group often share additional consistencies in the structure of their information. This paper proposes a domain-independent method for exploiting these consistencies by combining two CRFs in a stacked learning framework. The approach incorporates three successive steps of inference: First, an initial CRF processes single instances as usual. Next, we apply rule learning collectively on all labeled outputs of one context to acquire descriptions of its specific properties. Finally, we utilize these descriptions as dynamic and high quality features in an additional (stacked) CRF. The presented approach is evaluated with a real-world dataset for the segmentation of references and achieves a significant reduction of the labeling error.
机译:条件随机字段(CRF)是用于标记非结构化或文本数据的流行方法。与许多机器学习方法一样,这些无向图形模型假设要独立分布的实例。然而,在现实世界中,应用数据以自然的方式分组,例如,通过其创建上下文进行分组。每个组中的实例通常在其信息的结构中共享其他一致性。本文提出了一种独立的方法,用于通过在堆叠的学习框架中组合两个CRF来利用这些常量来利用这些频繁。该方法包含三个连续推断步骤:首先,初始CRF像往常一样处理单个实例。接下来,我们在一个上下文的所有标记输出中共同应用规则学习,以获取其特定属性的描述。最后,我们在额外的(堆叠的)CRF中使用这些描述作为动态和高质量的功能。呈现的方法是用真实世界数据集进行评估,用于分割引用并实现标记误差的显着降低。

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