Yuheng Jia, S. Kwong, Wenhui Wu, Wei Gao, Ran Wang
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引用次数: 2
摘要
本文研究了广义版的相关向量机(RVM),它是一种用于分类和普通回归的稀疏贝叶斯核机。广义RVM (Generalized RVM, GRVM)继承了广义线性模型(Generalized linear model, GLM)的工作,是对普通线性回归模型的一种自然推广,具有共同的参数估计方法。GRVM继承了GLM的优点,即统一的模型结构、相同的训练算法和方便的针对特定任务的模型设计。它还继承了RVM的优点,即概率输出、极稀疏解、超参数自估计。此外,GRVM通过假设条件输出属于指数族分布(EFD),将RVM扩展到分类和普通回归之外的更广泛的学习任务。由于EFD在贝叶斯分析中会导致推理难解问题,因此本文采用拉普拉斯近似来解决该问题,这是贝叶斯推理中常用的一种方法。进一步,基于GRVM设计了几种特定任务的模型,包括普通回归模型、计数数据回归模型、分类模型、有序回归模型等。此外,还讨论了GRVM与传统RVM模型之间的关系。最后,通过实验验证了该模型的有效性。
This paper considers the generalized version of relevance vector machine (RVM), which is a sparse Bayesian kernel machine for classification and ordinary regression. Generalized RVM (GRVM) follows the work of generalized linear model (GLM), which is a natural generalization of ordinary linear regression model and shares a common approach to estimate the parameters. GRVM inherits the advantages of GLM, i.e., unified model structure, same training algorithm, and convenient task-specific model design. It also inherits the advantages of RVM, i.e., probabilistic output, extremely sparse solution, hyperparameter auto-estimation. Besides, GRVM extends RVM to a wider range of learning tasks beyond classification and ordinary regression by assuming that the conditional output belongs to exponential family distribution (EFD). Since EFD results in inference intractable problem in Bayesian analysis, in this paper, Laplace approximation is adopted to solve this problem, which is a common approach in Bayesian inference. Further, several task-specific models are designed based on GRVM including models for ordinary regression, count data regression, classification, ordinal regression, etc. Besides, the relationship between GRVM and traditional RVM models are discussed. Finally, experimental results show the efficiency of the proposed GRVM model.