Representation learning is a fundamental problem in natural language processing. This paper studies how to learn a structured representation for text classification. Unlike most existing representation models that either use no structure or rely on pre-specified structures, we propose a reinforcement learning (RL) method to learn sentence representation by discovering optimized structures automatically. We demonstrate two attempts to build structured representation: Information Distilled LSTM (ID-LSTM) and Hierarchically Structured LSTM (HS-LSTM). ID-LSTM selects only important, task-relevant words, and HS-LSTM discovers phrase structures in a sentence. Structure discovery in the two representation models is formulated as a sequential decis...
We propose a structured learning approach, max-margin structure (MMS), which is targeted at natural ...
With exponential growth of the Internet, more than one exabyte of data is cre- ated on the Internet ...
Reinforcement learning addresses the problem of learning to select actions in order to maximize one’...
Usage of reinforcement learning (RL) in natural language processing (NLP) tasks has gained momentum ...
We use reinforcement learning to learn tree-structured neural networks for computing representations...
Recurrent Neural Networks (RNNs) represent a natural paradigm for modeling sequential data like text...
Many of the Natural Language Processing tasks that we would like to model with machine learning tech...
International audienceSupervised learning is about learning functions given a set of input and corre...
In this article we will introduce a new approach (and several implementations) to the task of sente...
To be successful in real-world tasks, Reinforcement Learning (RL) needs to exploit the compositional...
This dissertation explores the use of linguistic structure to inform the structure and parameterizat...
Learning to construct text representations in end-to-end systems can be difficult, as natural langua...
We applied a structure learning model, Max-Margin Structure (MMS), to natural language processing (N...
Unsupervised learning text representations aims at converting natural languages into vector represen...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
We propose a structured learning approach, max-margin structure (MMS), which is targeted at natural ...
With exponential growth of the Internet, more than one exabyte of data is cre- ated on the Internet ...
Reinforcement learning addresses the problem of learning to select actions in order to maximize one’...
Usage of reinforcement learning (RL) in natural language processing (NLP) tasks has gained momentum ...
We use reinforcement learning to learn tree-structured neural networks for computing representations...
Recurrent Neural Networks (RNNs) represent a natural paradigm for modeling sequential data like text...
Many of the Natural Language Processing tasks that we would like to model with machine learning tech...
International audienceSupervised learning is about learning functions given a set of input and corre...
In this article we will introduce a new approach (and several implementations) to the task of sente...
To be successful in real-world tasks, Reinforcement Learning (RL) needs to exploit the compositional...
This dissertation explores the use of linguistic structure to inform the structure and parameterizat...
Learning to construct text representations in end-to-end systems can be difficult, as natural langua...
We applied a structure learning model, Max-Margin Structure (MMS), to natural language processing (N...
Unsupervised learning text representations aims at converting natural languages into vector represen...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
We propose a structured learning approach, max-margin structure (MMS), which is targeted at natural ...
With exponential growth of the Internet, more than one exabyte of data is cre- ated on the Internet ...
Reinforcement learning addresses the problem of learning to select actions in order to maximize one’...