Neural network models recently proposed for question answering (QA) primarily focus on capturing the passage-question relation. However, they have minimal capability to link relevant facts distributed across multiple sentences which is crucial in achieving deeper understanding, such as performing multi-sentence reasoning, co-reference resolution, etc. They also do not explicitly focus on the question and answer type which often plays a critical role in QA. In this paper, we propose a novel end-to-end question-focused multi-factor attention network for answer extraction. Multi-factor attentive encoding using tensor-based transformation aggregates meaningful facts even when they are located in multiple sentences. To implicitly infer the answe...
Recently, the Visual Question Answering (VQA) task has gained increasing attention in artificial int...
Question answering (QA) systems have evolved exponentially over the past few years and have reached ...
Since the rise of neural networks in science and industry much progress has been made in the field o...
People have information needs of varying complexity, which can be solved by an intelligent agent abl...
Advanced attention mechanisms are an important part of successful neural network approaches for non-...
Tree kernels and neural networks are powerful machine learning models for extracting patterns from d...
Answer selection plays a key role in community question answering (CQA). Previous research on answer...
In this paper we address the answer retrieval problem in community-based question answering. To full...
Community question answering aims at choosing the most appropriate answer for a given question, whic...
Recurrent neural networks are now the state-of-the-art in natural language processing because they c...
Question Answering is a task which requires building models capable of providing answers to question...
In order to assess the degree of intelligence the machine, the machine's understanding of the langu...
We implement a state-of-the-art question answering system based on Convolutional Neural Networks and...
Question answering (QA) is one of the most important and challenging tasks for understanding human l...
In this paper we present a factoid question answering system for participation in Task 4 of the QALD...
Recently, the Visual Question Answering (VQA) task has gained increasing attention in artificial int...
Question answering (QA) systems have evolved exponentially over the past few years and have reached ...
Since the rise of neural networks in science and industry much progress has been made in the field o...
People have information needs of varying complexity, which can be solved by an intelligent agent abl...
Advanced attention mechanisms are an important part of successful neural network approaches for non-...
Tree kernels and neural networks are powerful machine learning models for extracting patterns from d...
Answer selection plays a key role in community question answering (CQA). Previous research on answer...
In this paper we address the answer retrieval problem in community-based question answering. To full...
Community question answering aims at choosing the most appropriate answer for a given question, whic...
Recurrent neural networks are now the state-of-the-art in natural language processing because they c...
Question Answering is a task which requires building models capable of providing answers to question...
In order to assess the degree of intelligence the machine, the machine's understanding of the langu...
We implement a state-of-the-art question answering system based on Convolutional Neural Networks and...
Question answering (QA) is one of the most important and challenging tasks for understanding human l...
In this paper we present a factoid question answering system for participation in Task 4 of the QALD...
Recently, the Visual Question Answering (VQA) task has gained increasing attention in artificial int...
Question answering (QA) systems have evolved exponentially over the past few years and have reached ...
Since the rise of neural networks in science and industry much progress has been made in the field o...