Inspired by the use of random projections in biological sensing systems, we present a new algorithm for processing data in classification problems. This is based on observations of the human brain and the fruit fly's olfactory system and involves randomly projecting data into a space of greatly increased dimension before applying a cap operation to truncate the smaller entries. This leads to a simple algorithm that is very computationally efficient and can be used to either give a sparse representation with minimal loss in classification accuracy or give improved robustness, in the sense that classification accuracy is improved when noise is added to the data. This is demonstrated with numerical experiments, which supplement theoretical results demonstrating that the resulting signal transform is continuous and invertible, in an appropriate sense.
翻译:在生物遥感系统使用随机预测的启发下,我们提出了一个处理分类问题数据的新算法,它基于对人体大脑和果蝇嗅觉系统的观测,并随机将数据投射到一个大为增加的空间,然后应用封顶操作将较小的条目截断。这导致一种计算效率很高的简单算法,可以用来在分类准确性方面造成微小损失,或者提高可靠性,也就是说,在数据添加噪音时,分类准确性会提高。这通过数字实验来证明,它补充了理论结果,表明由此产生的信号转换在适当意义上是连续和不可忽略的。