建模注释数据

D. Blei, Michael I. Jordan
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引用次数: 1250

摘要

我们考虑对带注释的数据建模的问题——具有多种类型的数据,其中一种类型(如标题)的实例充当另一种类型(如图像)的描述。我们描述了三个层次概率混合模型,旨在描述这些数据,最终达到对应潜狄利克雷分配,一个潜变量模型,有效地建模两种类型的联合分布和给定主要类型的注释的条件分布。我们在Corel图像和字幕数据库上进行了实验,评估了保留可能性、自动注释和基于文本的图像检索方面的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling annotated data
We consider the problem of modeling annotated data---data with multiple types where the instance of one type (such as a caption) serves as a description of the other type (such as an image). We describe three hierarchical probabilistic mixture models which aim to describe such data, culminating in correspondence latent Dirichlet allocation, a latent variable model that is effective at modeling the joint distribution of both types and the conditional distribution of the annotation given the primary type. We conduct experiments on the Corel database of images and captions, assessing performance in terms of held-out likelihood, automatic annotation, and text-based image retrieval.
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