基于凸优化的韵律预测线性回归

Ling Cen, M. Dong, P. Chan
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摘要

本文提出了一种基于L1正则化线性回归的文本到语音合成中语言特征与韵律参数之间关系的建模方法。通过将韵律预测表述为一个凸问题,它可以用非常有效的数值方法来求解。其性能可以类似于分类回归树(CART),这是一种广泛使用的韵律预测方法。然而,计算负载可以低至CART所需的76%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear Regression for Prosody Prediction via Convex Optimization
In this paper, a L1 regularized linear regression based method is proposed to model the relationship between the linguistic features and prosodic parameters in Text-to-Speech (TTS) synthesis. By formulating prosodic prediction as a convex problem, it can be solved using very efficient numerical method. The performance can be similar to that of the Classification and Regression Tree (CART), a widely used approach for prosodic prediction. However, the computational load can be as low as 76% of that required by CART.
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