论文标题

非线性嵌入的极端相似性学习的有效优化方法

Efficient Optimization Methods for Extreme Similarity Learning with Nonlinear Embeddings

论文作者

Yuan, Bowen, Li, Yu-Sheng, Quan, Pengrui, Lin, Chih-Jen

论文摘要

我们通过使用所有可能对的非线性嵌入模型(例如神经网络)来研究学习相似性的问题。这个问题以极端的对训练难以训练而闻名。对于使用线性嵌入的特殊情况,许多研究通过考虑某些损失函数并开发有效的优化算法来解决处理所有对的问题。本文旨在扩展一般非线性嵌入的结果。首先,我们完成了详细的推导,并提供了有效计算一些优化算法(例如功能,梯度评估和Hessian-vector产品)的构件的清洁配方。结果使使用许多优化方法用于非线性嵌入的极端相似性学习。其次,我们详细研究了一些优化方法。由于使用非线性嵌入,解决了与线性案例不同的实施问题。最后,某些方法证明对非线性嵌入的极端相似性学习非常有效。

We study the problem of learning similarity by using nonlinear embedding models (e.g., neural networks) from all possible pairs. This problem is well-known for its difficulty of training with the extreme number of pairs. For the special case of using linear embeddings, many studies have addressed this issue of handling all pairs by considering certain loss functions and developing efficient optimization algorithms. This paper aims to extend results for general nonlinear embeddings. First, we finish detailed derivations and provide clean formulations for efficiently calculating some building blocks of optimization algorithms such as function, gradient evaluation, and Hessian-vector product. The result enables the use of many optimization methods for extreme similarity learning with nonlinear embeddings. Second, we study some optimization methods in detail. Due to the use of nonlinear embeddings, implementation issues different from linear cases are addressed. In the end, some methods are shown to be highly efficient for extreme similarity learning with nonlinear embeddings.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源