Neural network approaches have been applied to computational morphology with great success, improving the performance of most tasks by a large margin and providing new perspectives for modeling. This paper starts with a brief introduction to computational morphology, followed by a review of recent work on computational morphology with neural network approaches, to provide an overview of the area. In the end, we will analyze the advantages and problems of neural network approaches to computational morphology, and point out some directions to be explored by future research and study.
翻译:在计算形态方面,采用了神经网络方法,取得了巨大成功,使大多数任务的绩效大有改进,并为建模提供了新的视角,本文件首先简要介绍了计算形态,然后审查了最近关于使用神经网络方法计算形态的工作,以概述该地区的情况。最后,我们将分析计算形态的神经网络方法的优点和问题,并指出未来研究将探讨的一些方向。