A major challenge in modern neural networks is the utilization of previous knowledge for new tasks in an effective manner, otherwise known as transfer learning. Fine-tuning, the most widely used method for achieving this, suffers from catastrophic forgetting. The problem is often exacerbated in natural language processing (NLP). In this work, we assess progressive neural networks (PNNs) as an alternative to fine-tuning. The evaluation is based on common NLP tasks such as sequence labeling and text classification. By gauging PNNs across a range of architectures, datasets, and tasks, we observe improvements over the baselines throughout all experiments
The present work takes into account the compactness and efficiency of Recurrent Neural Networks (RNN...
The advancement of neural network models has led to state-of-the-art performance in a wide range of ...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...
The current generation of neural network-based natural language processing models excels at learning...
rba @ bellcore.com Recent developments in neural algorithms provide a new approach to natural langua...
Several researchers have successfully used Neural Networks (NN) to process natural languages. In mos...
One approach used to develop computer systems for natu- identifying phrases, e.g.<the boy> is ...
Much of the focus in the area of knowledge distillation has beenon distilling knowledge from a large...
A new learning algorithm, the progressive learning algorithm, is proposed for use in a goal-seeking ...
Effectively scaling large Transformer models is a main driver of recent advances in natural language...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
We propose a unified neural network architecture and learning algorithm that can be applied to vario...
In this paper we address the problem of text-to-phoneme (TTP) mapping implemented by neural networks...
The present work takes into account the compactness and efficiency of Recurrent Neural Networks (RNN...
The advancement of neural network models has led to state-of-the-art performance in a wide range of ...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...
The current generation of neural network-based natural language processing models excels at learning...
rba @ bellcore.com Recent developments in neural algorithms provide a new approach to natural langua...
Several researchers have successfully used Neural Networks (NN) to process natural languages. In mos...
One approach used to develop computer systems for natu- identifying phrases, e.g.<the boy> is ...
Much of the focus in the area of knowledge distillation has beenon distilling knowledge from a large...
A new learning algorithm, the progressive learning algorithm, is proposed for use in a goal-seeking ...
Effectively scaling large Transformer models is a main driver of recent advances in natural language...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
In the last few decades, text mining has been used to extract knowledge from free texts. Applying ne...
2018-08-01Recurrent neural networks (RNN) have been successfully applied to various Natural Language...
We propose a unified neural network architecture and learning algorithm that can be applied to vario...
In this paper we address the problem of text-to-phoneme (TTP) mapping implemented by neural networks...
The present work takes into account the compactness and efficiency of Recurrent Neural Networks (RNN...
The advancement of neural network models has led to state-of-the-art performance in a wide range of ...
Title: Exploring Benefits of Transfer Learning in Neural Machine Translation Author: Tom Kocmi Depar...