Most domain adaptation methods for machine reading comprehension (MRC) use a pre-trained question-answer (QA) construction model to generate pseudo QA pairs for MRC transfer. Such a process will inevitably introduce mismatched pairs (i.e., Noisy Correspondence) due to i) the unavailable QA pairs in target documents, and ii) the domain shift during applying the QA construction model to the target domain. Undoubtedly, the noisy correspondence will degenerate the performance of MRC, which however is neglected by existing works. To solve such an untouched problem, we propose to construct QA pairs by additionally using the dialogue related to the documents, as well as a new domain adaptation method for MRC. Specifically, we propose Robust Domain...
In recent years researchers have achieved considerable success applying neural network methods to qu...
Abstract. The Question Answering for Machine Reading (QA4MRE) task was set up as a reading comprehen...
Question answering (QA) has demonstrated impressive progress in answering questions from customized ...
Machine Reading Comprehension (MRC) is an AI challenge that requires machines to determine the corre...
Advances in NLP have yielded impressive results for the task of machine reading comprehension (MRC),...
We propose a simple and effective strategy for data augmentation for low-resource machine reading co...
Question generation (QG) approaches based on large neural models require (i) large-scale and (ii) hi...
Reading comprehension (RC) has been studied in a variety of datasets with the boosted performance br...
142 pagesMachine reading comprehension (MRC) tasks have attracted substantial attention from both ac...
Machine Reading Comprehension (MRC) for question answering (QA), which aims to answer a question giv...
Machine reading comprehension (MRC) is an AI challenge that requires machines to determine the corre...
Multi-passage machine reading comprehension (MRC) aims to answer a question by multiple passages. Ex...
We present Pre-trained Machine Reader (PMR), a novel method to retrofit Pre-trained Language Models ...
Machine Reading Comprehension (MRC), particularly extractive close-domain question-answering, is a p...
We consider two problems of NMT domain adaptation using meta-learning. First, we want to reach domai...
In recent years researchers have achieved considerable success applying neural network methods to qu...
Abstract. The Question Answering for Machine Reading (QA4MRE) task was set up as a reading comprehen...
Question answering (QA) has demonstrated impressive progress in answering questions from customized ...
Machine Reading Comprehension (MRC) is an AI challenge that requires machines to determine the corre...
Advances in NLP have yielded impressive results for the task of machine reading comprehension (MRC),...
We propose a simple and effective strategy for data augmentation for low-resource machine reading co...
Question generation (QG) approaches based on large neural models require (i) large-scale and (ii) hi...
Reading comprehension (RC) has been studied in a variety of datasets with the boosted performance br...
142 pagesMachine reading comprehension (MRC) tasks have attracted substantial attention from both ac...
Machine Reading Comprehension (MRC) for question answering (QA), which aims to answer a question giv...
Machine reading comprehension (MRC) is an AI challenge that requires machines to determine the corre...
Multi-passage machine reading comprehension (MRC) aims to answer a question by multiple passages. Ex...
We present Pre-trained Machine Reader (PMR), a novel method to retrofit Pre-trained Language Models ...
Machine Reading Comprehension (MRC), particularly extractive close-domain question-answering, is a p...
We consider two problems of NMT domain adaptation using meta-learning. First, we want to reach domai...
In recent years researchers have achieved considerable success applying neural network methods to qu...
Abstract. The Question Answering for Machine Reading (QA4MRE) task was set up as a reading comprehen...
Question answering (QA) has demonstrated impressive progress in answering questions from customized ...