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Sequential Learning and Regularization in Variational Recurrent Autoencoder

机译:变分复制自动化器中的顺序学习与正规化

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Latent variable model based on variational autoen-coder (VAE) is influential in machine learning for signal processing. VAE basically suffers from the issue of posterior collapse in sequential learning procedure where the variational posterior easily collapses to a prior as standard Gaussian. Latent semantics are then neglected in optimization process. The recurrent decoder therefore generates noninformative or repeated sequence data. To capture sufficient latent semantics from sequence data, this study simultaneously fulfills an amortized regularization for encoder, extends a Gaussian mixture prior for latent variable, and runs a skip connection for decoder. The noise robust prior, learned from the amortized encoder, is likely aware of temporal features. A variational prior based on the amortized mixture density is formulated in implementation of variational recurrent autoencoder for sequence reconstruction and representation. Owing to skip connection, the sequence samples are continuously predicted in decoder with contextual precision at each time step. Experiments on language model and sentiment classification show that the proposed method mitigates the issue of posterior collapse and learns the meaningful latent features to improve the inference and generation for semantic representation.
机译:基于变AUTOEN编码器(VAE)潜变量模型是在机器学习用于信号处理的影响力。 VAE基本上从连续的学习过程后崩溃的问题,受到在变后容易塌陷到先前的标准高斯。然后在优化过程中忽略了潜在语义。因此,复制解码器产生非信息或重复的序列数据。为了从序列数据捕获充足的潜在语义,本研究同时满足编码器的摊销正则化,在潜在变量之前扩展高斯混合,并为解码器运行跳过连接。从摊销编码器中学到的噪声稳健可能意识到时间特征。基于累积混合密度的变形例在实施变分复制自身额相序列重建和表示中的制定。由于跳过连接,在每次步骤时,通过上下文精度在解码器中连续预测序列样本。语言模型和情绪分类的实验表明,该方法减轻了后崩倒的问题,并学习了有意义的潜在特征,以改善语义表示的推理和生成。

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