The state-of-the-art methods for solving optimization problems in big dimensions are variants of randomized coordinate descent (RCD). In this paper we introduce a fundamentally new type of acceleration strategy for RCD based on the augmentation of the set of coordinate directions by a few spectral or conjugate directions. As we increase the number of extra directions to be sampled from, the rate of the method improves, and interpolates between the linear rate of RCD and a linear rate independent of the condition number. We develop and analyze also inexact variants of these methods where the spectral and conjugate directions are allowed to be approximate only. We motivate the above development by proving several negative results which highlight the limitations of RCD with importance sampling.
翻译:在本文中,我们为刚果民盟引入了一种全新的加速战略,其基础是,通过几个光谱或共融方向扩大一套协调方向。随着我们增加从中抽取的额外方向的数量,该方法的速率有所提高,而且将刚果民盟线性比率与独立于条件号的线性比率相交叉。我们还开发并分析了这些方法的不确切的变方,允许光谱和共融方向仅接近。我们通过证明一些负面结果来推动上述发展,这些结果突出了刚果民盟在重要性抽样方面的局限性。