Since the advent of the Internet, quantifying the relative importance of web pages is at the core of search engine methods. According to one algorithm, PageRank, the worldwide web structure is represented by the Google matrix, whose principal eigenvector components assign a numerical value to web pages for their ranking. Finding such a dominant eigenvector on an ever-growing number of web pages becomes a computationally intensive task incompatible with Moore's Law. We demonstrate that special-purpose optical machines such as networks of optical parametric oscillators, lasers, and gain-dissipative condensates, may aid in accelerating the reliable reconstruction of principal eigenvectors of real-life web graphs. We discuss the feasibility of simulating the PageRank algorithm on large Google matrices using such unconventional hardware. We offer alternative rankings based on the minimisation of spin Hamiltonians. Our estimates show that special-purpose optical machines may provide dramatic improvements in power consumption over classical computing architectures.
翻译:自因特网问世以来,对网页相对重要性进行量化是搜索引擎方法的核心。根据一种算法,PageRank, 全世界网络结构由谷歌矩阵代表,谷歌矩阵的主要成份为网页的排名分配了一个数值。在不断增加的网页上找到这样一个占支配地位的源代码器,这在计算上已成为一项与摩尔法不相符的艰巨任务。我们证明,特殊用途光学机器,如光学准光学振荡器网络、激光器和增益分散式蓄积器,可以帮助加快真实网络图主要成份的可靠重建。我们讨论了使用这种非传统硬件在大型谷歌矩阵上模拟PephalRank算法的可行性。我们提供基于微量汉密尔顿人法的替代等级。我们的估计表明,特殊用途的光学机器可以极大地改善古典计算结构的能量消耗。