A note on mixtures of experts for multiclass responses: approximation rate and Consistent Bayesian Inference

Yang Ge, Wenxin Jiang
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引用次数: 4

Abstract

We report that mixtures of m multinomial logistic regression can be used to approximate a class of 'smooth' probability models for multiclass responses. With bounded second derivatives of log-odds, the approximation rate is O(m-2/s) in Hellinger distance or O(m-4/s) in Kullback-Leibler divergence. Here s = dim(x) is the dimension of the input space (or the number of predictors). With the availability of training data of size n, we also show that 'consistency' in multiclass regression and classification can be achieved, simultaneously for all classes, when posterior based inference is performed in a Bayesian framework. Loosely speaking, such 'consistency' refers to performance being often close to the best possible for large n. Consistency can be achieved either by taking m = mn, or by taking m to be uniformly distributed among {1, ...,mn} according to the prior, where 1 ≺ mn ≺ na in order as n grows, for some a ∈ (0, 1).
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多类响应的混合专家注释:近似率和一致贝叶斯推断
我们报告了m多项逻辑回归的混合物可以用来近似一类多类响应的“光滑”概率模型。在log-odds二阶导数有界的情况下,Hellinger距离近似速率为O(m-2/s), Kullback-Leibler散度近似速率为O(m-4/s)。这里s = dim(x)是输入空间的维度(或预测器的数量)。随着大小为n的训练数据的可用性,我们还表明,当在贝叶斯框架中执行后验推理时,可以同时实现多类回归和分类的“一致性”。宽泛地说,这种“一致性”指的是在大n时,性能往往接近最佳。一致性可以通过取m = mn,或取m均匀分布在{1,…,mn}根据先验,其中,对于某a∈(0,1),1 mn na按n的增长顺序排列。
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