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Linear discriminant analysis and discriminative log-linear modeling

机译:线性判别分析和鉴别对数线性建模

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We discuss the relationship between the discriminative training of Gaussian models and the maximum entropy framework for log-linear models. Observing that linear transforms leave the distributions resulting from the log-linear model unchanged, we derive a discriminative linear feature reduction technique from the maximum entropy approach and compare it to the well-known linear discriminant analysis. From experiments on different corpora we observe that the new technique performs better than linear discriminant analysis if the dimensionality of the feature space is large with respect to the number of classes.
机译:我们讨论了高斯模型的鉴别培训与对数线性模型的最大熵框架之间的关系。观察线性变换留出由Log-Linear模型不变产生的分布,我们从最大熵方法获得识别的线性特征减少技术,并将其与众所周知的线性判别分析进行比较。从不同的Corpora进行实验,我们观察到,如果特征空间的维度相对于类数,则新技术比线性判别分析更好。

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