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Convolutional Neural Networks Based Multi-task Deep Learning for Movie Review Classification

机译:基于卷积神经网络的多任务深度学习的电影评论分类

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Deep learning has achieved impressive success in natural language processing. However, most previous models are learned on the specific single tasks, suffering from insufficient training set. Multi-task deep learning can solve this dilemma by sharing the part of parameters, improving generalization. The common multi-task deep learning model consists of the shared layer and the task specific layer. In this paper, we attempt to enhance the performance of shared layer and proposed two variants based on convolutional neural networks. The first model is Agent Model-Direct Concatenate, where each task is assigned with a separate convolutional neural network for extracting the common and task specific features simultaneously. The second model is Agent Model-Gating Concatenation, where the task specific layer could automatically decide the information flow of each element of the output of shared layer. The two networks are trained jointly over three pair-wise groups of movie review data sets. Experiments show the effectiveness of our two networks, inspiring a potential direction for the related research of multi-task deep learning.
机译:深度学习在自然语言处理方面取得了令人瞩目的成功。但是,大多数先前的模型都是在特定的单个任务上学习的,因为它们的训练集不足。多任务深度学习可以通过共享部分参数,改善泛化来解决这一难题。通用的多任务深度学习模型由共享层和任务特定层组成。在本文中,我们尝试提高共享层的性能,并提出了基于卷积神经网络的两个变体。第一个模型是Agent Model-Direct Concatenate,其中为每个任务分配一个单独的卷积神经网络,以同时提取公共特征和特定于任务的特征。第二个模型是代理模型选通串联,其中特定于任务的层可以自动确定共享层输出的每个元素的信息流。这两个网络在电影评论数据集的三对成对组中进行联合训练。实验证明了我们两个网络的有效性,为多任务深度学习的相关研究提供了潜在的方向。

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