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Deep Topic Models for Multi-label Learning

机译:多标签学习的深课题模型

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We present a probabilistic framework for multi-label learning based on a deep generative model for the binary label vector associated with each observation. Our generative model learns deep multi-layer latent embeddings of the binary label vector, which are conditioned on the input features of the observation. The model also has an interesting interpretation in terms of a deep topic model, with each label vector representing a bag-of-words document, with the input features being its meta-data. In addition to capturing the structural properties of the label space (e.g., a near-low-rank label matrix), the model also offers a clean, geometric interpretation. In particular, the nonlinear classification boundaries learned by the model can be seen as the union of multiple convex polytopes. Our model admits a simple and scalable inference via efficient Gibbs sampling or EM algorithm. We compare our model with state-of-the-art baselines for multi-label learning on benchmark data sets, and also report some interesting qualitative results.
机译:基于与每个观察相关联的二进制标签向量的深度生成模型,我们为多标签学习提供了一个概率框架。我们的生成模型学习二进制标签向量的深层多层潜在嵌入,这是在观察的输入特征上的条件。该模型在深度主题模型方面还具有一个有趣的解释,每个标签矢量表示单词袋文档,其中输入功能是其元数据。除了捕获标签空间的结构性(例如,近低级标签矩阵)之外,该模型还提供干净的几何解释。特别地,模型学习的非线性分类边界可以被视为多个凸多台的联合。我们的模型通过高效的Gibbs采样或EM算法承认了一种简单且可扩展的推断。我们将我们的模型与最先进的基线进行了基准数据集的多标签学习的模型,并报告了一些有趣的定性结果。

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