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The Supervised IBP: Neighbourhood Preserving Infinite Latent Feature Models

机译:有监督的IBP:邻域保留无限潜在特征模型

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We propose a probabilistic model to infer supervised latent variables in the Hamming space from observed data. Our model allows simultaneous inference of the number of binary latent variables, and their values. The latent variables preserve neighbourhood structure of the data in a sense that objects in the same semantic concept have similar latent values, and objects in different concepts have dissimilar latent values. We formulate the supervised infinite latent variable problem based on an intuitive principle of pulling objects together if they are of the same type, arid pushing them apart if they are not. We then combine this principle with a flexible Indian Buffet Process prior on the latent variables. We show that the inferred supervised latent variables can be directly used to perform a nearest neighbour search for the purpose of retrieval. We introduce a new application of dynamically extending hash codes, and show how to effectively couple the structure of the hash codes with continuously growing structure of the neighbourhood preserving infinite latent feature space.
机译:我们提出一种概率模型,从观测数据中推断汉明空间中的监督潜在变量。我们的模型允许同时推断二进制潜在变量的数量及其值。在相同语义概念中的对象具有相似的潜在值,而在不同概念中的对象具有不同的潜在值的意义上,潜在变量保留了数据的邻域结构。我们基于将相同类型的对象拉在一起,如果不相同则将它们推开的直观原理,来制定监督的无限潜变量问题。然后,我们在潜在变量之前将这一原理与灵活的Indian Buffet过程结合起来。我们表明,可以将推断出的监督潜在变量直接用于执行最近邻居搜索,以进行检索。我们介绍了动态扩展哈希码的新应用,并展示了如何有效地将哈希码的结构与邻域的连续增长结构相结合,从而保留无限的潜在特征空间。

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