Existing models to extract temporal relations between events lack a principled method to incorporate external knowledge. In this study, we introduce Bayesian-Trans, a Bayesian learning-based method that models the temporal relation representations as latent variables and infers their values via Bayesian inference and translational functions. Compared to conventional neural approaches, instead of performing point estimation to find the best set parameters, the proposed model infers the parameters' posterior distribution directly, enhancing the model's capability to encode and express uncertainty about the predictions. Experimental results on the three widely used datasets show that Bayesian-Trans outperforms existing approaches for event temporal relation extraction. We additionally present detailed analyses on uncertainty quantification, comparison of priors, and ablation studies, illustrating the benefits of the proposed approach.
翻译:在这项研究中,我们引入了贝耶斯-Trans(Bayesian-Trans)这种以学习为基础的方法,通过Bayesian推论和翻译功能将时间关系表示作为潜在的变量,并推断其价值。与传统的神经方法相比,拟议模型不是进行点估计以找到最佳的设定参数,而是直接推断参数的后方分布,加强模型对预测进行编码和表达不确定性的能力。三种广泛使用的数据集的实验结果表明,Bayesian-Trans(Bayesian-Trans)在事件时间关系提取方面超越了现有方法。我们进一步详细分析了不确定性的量化、先前的比较和通货膨胀研究,说明了拟议方法的益处。