Neural network-based methods are the state of the art in negation scope resolution. However, they often use the unrealistic assumption that cue information is completely accurate. Even if this assumption holds, there remains a dependency on engineered features from state-of-the-art machine learning methods. The current study adopted a two-step negation resolving apporach to assess whether a Bidirectional Long Short-Term Memory-based method can be used for cue detection as well, and how inaccurate cue predictions would affect the scope resolution performance. Results suggest that this method is not suitable for negation detection. Scope resolution performance is most robust against inaccurate information for models with a recurrent layer only, compared to extensions with a Conditional Random Fields layer or a post-processing algorithm. We advocate for more research into the application of deep learning on negation detection and the effect of imperfect information on scope resolution.
翻译:以神经网络为基础的方法是否定范围分辨率的最先进的方法。然而,这些方法往往使用不切实际的假设,即提示信息是完全准确的。即使这一假设有效,仍然依赖最先进的机器学习方法的工程特征。目前的研究采取了两步式的否定解决方案,以评估基于双向短期内存的短期双向方法是否也可以用于信号探测,以及信号预测将如何不准确地影响范围分辨率性能。结果显示,这一方法不适合于否定分辨率的检测。与有条件随机场层或后处理算法的扩展相比,范围分辨率的性能对于仅具有经常层的模型的不准确信息最为强大。我们主张更多地研究如何应用关于否定检测的深度学习和不完善信息对范围分辨率的影响。