While Machine Comprehension (MC) has attracted extensive research interests in recent years, existing approaches mainly belong to the category of Machine Reading Comprehension task which mines textual inputs (paragraphs and questions) to predict the answers (choices or text spans). However, there are a lot of MC tasks that accept audio input in addition to the textual input, e.g. English listening comprehension test. In this paper, we target the problem of Audio-Oriented Multimodal Machine Comprehension, and its goal is to answer questions based on the given audio and textual information. To solve this problem, we propose a Dynamic Inter- and Intra-modality Attention (DIIA) model to effectively fuse the two modalities (audio and textual). DIIA can work as an independent component and thus be easily integrated into existing MC models. Moreover, we further develop a Multimodal Knowledge Distillation (MKD) module to enable our multimodal MC model to accurately predict the answers based only on either the text or the audio. As a result, the proposed approach can handle various tasks including: Audio-Oriented Multimodal Machine Comprehension, Machine Reading Comprehension and Machine Listening Comprehension, in a single model, making fair comparisons possible between our model and the existing unimodal MC models. Experimental results and analysis prove the effectiveness of the proposed approaches. First, the proposed DIIA boosts the baseline models by up to 21.08% in terms of accuracy; Second, under the unimodal scenarios, the MKD module allows our multimodal MC model to significantly outperform the unimodal models by up to 18.87%, which are trained and tested with only audio or textual data.
翻译:虽然机器理解(MC)近年来吸引了广泛的研究兴趣,但现有方法主要属于机器阅读理解(Machine Read Convention)一类,即用文字输入(段落和问题)来预测答案(选择或文本跨度),然而,除了文字输入(例如英语倾听理解测试)外,还有许多MC任务接受音频输入(比如英语听觉理解测试)。在本文中,我们针对的是音频导向多式机器理解(MKD)的问题,其目标是根据给定的音频和文字信息回答问题。为了解决这个问题,我们提议了一个动态的跨和不轨准确关注(DIIA)模型,以有效地将两种模式(音频和文本跨度)整合起来。但是,DIIA可以作为一个独立的组成部分发挥作用,从而很容易地融入现有的MC模式。我们提出的多式知识蒸馏(MKD)模块只能用文字或音频来准确预测答案。因此,拟议的非模型方法可以处理各种任务,包括:音频、双向的摩尔式模型、多式模型的模型和多式模型的现有版本的版本的版本的版本,使得我们无法理解。