Existing Math Word Problem (MWP) solvers have achieved high accuracy on benchmark datasets. However, prior works have shown that such solvers do not generalize well and rely on superficial cues to achieve high performance. In this paper, we first conduct experiments to showcase that this behaviour is mainly associated with the limited size and diversity present in existing MWP datasets. Next, we propose several data augmentation techniques broadly categorized into Substitution and Paraphrasing based methods. By deploying these methods we increase the size of existing datasets by five folds. Extensive experiments on two benchmark datasets across three state-of-the-art MWP solvers show that proposed methods increase the generalization and robustness of existing solvers. On average, proposed methods significantly increase the state-of-the-art results by over five percentage points on benchmark datasets. Further, the solvers trained on the augmented dataset perform comparatively better on the challenge test set. We also show the effectiveness of proposed techniques through ablation studies and verify the quality of augmented samples through human evaluation.
翻译:现有的数学文字问题(MWP)解决方案在基准数据集上取得了很高的准确性。然而,先前的研究表明,这些解决方案没有很好地推广,而是依靠浅浅的线索来取得高性能。在本文件中,我们首先进行实验,以展示这种行为主要与现有数学词汇数据集中存在的有限规模和多样性有关。接下来,我们提出几种数据增强技术,将其广泛分为基于替代和引言的方法。通过采用这些方法,我们将现有数据集的大小增加了五个折叠。在三个最先进的MWP解决方案解决方案中,对两个基准数据集的广泛实验表明,建议的方法提高了现有解决方案的普及性和稳健性。平均而言,拟议方法使基准数据集中的最新结果大大提高了五个百分点以上。此外,在扩大数据集方面受过培训的解决方案在挑战测试集上表现得相对较好。我们还通过通货膨胀研究展示了拟议技术的实效,并通过人类评估核实了增加样本的质量。