We address the challenging task of computational natural language inference, by which we mean bridging two or more natural language texts while also providing an explanation of how they are connected. In the context of question answering (i.e., finding short answers to natural language questions), this inference connects the question with its answer and we learn to approximate this inference with machine learning. In particular, here we present four approaches to question answering, each of which shows a significant improvement in performance over baseline methods. In our first approach, we make use of the underlying discourse structure inherent in free text (i.e. whether the text contains an explanation, elaboration, contrast, etc.) in ord...
Given a text, several questions can be asked. For some of these questions, the answer can be directl...
The task of causal question answering aims to reason about causes and effects over a provided real o...
Monolingual alignment models have been shown to boost the performance of question answering systems ...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
Natural Language Inference (NLI) is fundamental to many Natural Language Processing (NLP) applicatio...
The complexity of natural language and the open-domain nature of the World Wide Web have caused mode...
The task of Question Answering (QA) is arguably one of the oldest tasks in Natural Language Processi...
Natural language has long been the most prominent tool for humans to disseminate, learn and create k...
We propose a novel method for exploiting the semantic structure of text to answer multiple-choice qu...
Question answering (QA) over knowledge bases provides a user-friendly way of accessing the massive a...
Recent developments in pre-trained neural language modeling have led to leaps in accuracy on common-...
Question Answering (QA) is the task of automatically generating answers to natural language question...
Large neural language models are steadily contributing state-of-the-art performance to question answ...
Lexical semantic models provide robust performance for question answering, but, in general, can only...
Given a text, several questions can be asked. For some of these questions, the answer can be directl...
The task of causal question answering aims to reason about causes and effects over a provided real o...
Monolingual alignment models have been shown to boost the performance of question answering systems ...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
Natural language understanding (NLU) of text is a fundamental challenge in AI, and it has received s...
Natural Language Inference (NLI) is fundamental to many Natural Language Processing (NLP) applicatio...
The complexity of natural language and the open-domain nature of the World Wide Web have caused mode...
The task of Question Answering (QA) is arguably one of the oldest tasks in Natural Language Processi...
Natural language has long been the most prominent tool for humans to disseminate, learn and create k...
We propose a novel method for exploiting the semantic structure of text to answer multiple-choice qu...
Question answering (QA) over knowledge bases provides a user-friendly way of accessing the massive a...
Recent developments in pre-trained neural language modeling have led to leaps in accuracy on common-...
Question Answering (QA) is the task of automatically generating answers to natural language question...
Large neural language models are steadily contributing state-of-the-art performance to question answ...
Lexical semantic models provide robust performance for question answering, but, in general, can only...
Given a text, several questions can be asked. For some of these questions, the answer can be directl...
The task of causal question answering aims to reason about causes and effects over a provided real o...
Monolingual alignment models have been shown to boost the performance of question answering systems ...