Answer selection is one of the key steps in many Question Answering (QA) applications. In this paper, a new deep model with two kinds of attention is proposed for answer selection: the Double Attention Recurrent Convolution Neural Network (DARCNN). Double attention means self-attention and cross-attention. The design inspiration of this model came from the Transformer in the domain of machine translation. Self-attention can directly calculate dependencies between words regardless of the distance. However, self-attention ignores the distinction between its surrounding words and other words. Thus, we design a decay self-attention that prioritizes local words in a sentence. In addition, cross-attention is established to achieve interaction bet...
We implement a state-of-the-art question answering system based on Convolutional Neural Networks and...
Machine Reading Comprehension (MRC) refers to the task that aims to read the context through the mac...
In many real-world machine learning problems, the features are changing along the time, with some ol...
The contradiction between the large population of China and the limited medical resources lead to th...
In order to assess the degree of intelligence the machine, the machine's understanding of the langu...
Most of the recent progresses on visual question answering are based on recurrent neural networks (R...
Answer Sentence Selection (ASS) is one of the steps typically involved in Question Answering, a hard...
Answer selection plays a key role in community question answering (CQA). Previous research on answer...
International audienceSince end-to-end deep learning models have started to replace traditional pipe...
Recurrent Convolutional Neural Networks (RCNNs) have shown impressive performance in tasks that requ...
Answer selection is an important task in community Question Answering (cQA). In recent years, attent...
Community question answering aims at choosing the most appropriate answer for a given question, whic...
We propose a novel attention based deep learning ar-chitecture for visual question answering task (V...
In this paper, we propose solutions to advance answer selection in Community Question Answering (CQA...
In this paper, we propose solutions to advance answer selection in Community Question Answering (CQA...
We implement a state-of-the-art question answering system based on Convolutional Neural Networks and...
Machine Reading Comprehension (MRC) refers to the task that aims to read the context through the mac...
In many real-world machine learning problems, the features are changing along the time, with some ol...
The contradiction between the large population of China and the limited medical resources lead to th...
In order to assess the degree of intelligence the machine, the machine's understanding of the langu...
Most of the recent progresses on visual question answering are based on recurrent neural networks (R...
Answer Sentence Selection (ASS) is one of the steps typically involved in Question Answering, a hard...
Answer selection plays a key role in community question answering (CQA). Previous research on answer...
International audienceSince end-to-end deep learning models have started to replace traditional pipe...
Recurrent Convolutional Neural Networks (RCNNs) have shown impressive performance in tasks that requ...
Answer selection is an important task in community Question Answering (cQA). In recent years, attent...
Community question answering aims at choosing the most appropriate answer for a given question, whic...
We propose a novel attention based deep learning ar-chitecture for visual question answering task (V...
In this paper, we propose solutions to advance answer selection in Community Question Answering (CQA...
In this paper, we propose solutions to advance answer selection in Community Question Answering (CQA...
We implement a state-of-the-art question answering system based on Convolutional Neural Networks and...
Machine Reading Comprehension (MRC) refers to the task that aims to read the context through the mac...
In many real-world machine learning problems, the features are changing along the time, with some ol...