论文标题
通过场景进化的过程文本理解
Procedural Text Understanding via Scene-Wise Evolution
论文作者
论文摘要
程序文本理解需要机器来推理动态叙事中的实体状态。当前的程序文本理解方法通常是\ textbf {entity},它们分别跟踪每个实体并独立预测每个实体的不同状态。这样的实体范式不考虑实体与其国家之间的相互作用。在本文中,我们提出了一个新的\ textbf {tocewise}范式,以供程序文本理解,该范式以逐场的方式共同跟踪所有实体的状态。基于此范式,我们提出\ textbf {s} cene \ textbf {g} raph \ textbf {r} easoner(\ textbf {sgr}),它引入了一系列动态演化的场景图,以共同构建实体,状态,其关联的演化。这样,可以共同捕获所有实体和状态之间的深层互动,并同时从场景图中得出。实验表明,SGR不仅实现了新的最新性能,而且还可以显着加速推理速度。
Procedural text understanding requires machines to reason about entity states within the dynamical narratives. Current procedural text understanding approaches are commonly \textbf{entity-wise}, which separately track each entity and independently predict different states of each entity. Such an entity-wise paradigm does not consider the interaction between entities and their states. In this paper, we propose a new \textbf{scene-wise} paradigm for procedural text understanding, which jointly tracks states of all entities in a scene-by-scene manner. Based on this paradigm, we propose \textbf{S}cene \textbf{G}raph \textbf{R}easoner (\textbf{SGR}), which introduces a series of dynamically evolving scene graphs to jointly formulate the evolution of entities, states and their associations throughout the narrative. In this way, the deep interactions between all entities and states can be jointly captured and simultaneously derived from scene graphs. Experiments show that SGR not only achieves the new state-of-the-art performance but also significantly accelerates the speed of reasoning.