基于自适应d进搜索的随机寻根算法

A. Yazidi, B. Oommen
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引用次数: 1

摘要

在随机优化领域中遇到的最基本的问题是随机寻根(SRF)问题,其任务是找到一个未知点x*,对于一个给定的函数g, g(x*) = 0,只能在存在噪声的情况下观察到。绝大多数SRF问题的最新解决方案都涉及随机逼近理论。后一类算法的前提是以保守的方式探索搜索空间的所谓“小步骤”过程进行操作。使用这种范式,在任何时间瞬间调查的点都接近于前一个时间瞬间调查的点,使得收敛到最优点x*的速度很慢。这种搜索范例的不幸之处在于,尽管g()包含可以消除大部分搜索空间的信息,但这些信息没有得到利用。本文提供了一个开创性的、新颖的方案来发现和利用这些信息。我们的解决方案在每个历元至少递归地缩小搜索空间,其中d≥2是算法的用户定义参数。这大大增强了收敛性。从概念上讲,这是通过根据Oommen最初提出的随机点定位(SPL)问题的连续空间推广对SRF问题进行微妙的重新表述来实现的。我们的方案部分基于最初提出的具有自适应d-ary搜索的连续点定位(cpld - ads)。然而,由于SRF问题固有的不对称性,该解决方案不适用于我们的特定领域。我们的解决方案调用了类似于cpld - ads的解决方案,将搜索区间划分为d个子区间,使用学习自动机计算未知根x*相对于这些子区间的位置,并在每次迭代中通过消除至少一个分区来修剪搜索空间。我们的方案,SRF的cpld - ads算法,记为SRF- ads,以任意大的精度收敛到未知根x*,即以尽可能接近于期望的概率。与Oommen等人提出的SPL问题的经典公式不同,在我们的设置中,暗示准确响应的“环境”的概率p是非恒定的。实际上,后一种概率取决于被检查的点x和待修剪的候选区域。p不是常数的事实使分析更加复杂。剪枝的决策规则也不同于p为常数时的决策规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving Stochastic Root-Finding with adaptive d-ary search
The most fundamental problem encountered in the field of stochastic optimization, is the Stochastic Root Finding (SRF) problem where the task is to locate an unknown point x* for which g(x*) = 0 for a given function g that can only be observed in the presence of noise. The vast majority of the state-of-the-art solutions to the SRF problem involve the theory of stochastic approximation. The premise of the latter family of algorithms is to operate by means of so-called “small-step” processes that explore the search space in a conservative manner. Using this paradigm, the point investigated at any time instant is in the proximity of the point investigated at the previous time instant, rendering the convergence towards the optimal point, x*, to be sluggish. The unfortunate thing about such a search paradigm is that although g() contains information using which large sections of the search space can be eliminated, this information is unutilized. This paper provides a pioneering and novel scheme to discover and utilize this information. Our solution recursively shrinks the search space by, at least, a factor of 2d/3 at each epoch, where d ≥ 2 is a user-defined parameter of the algorithm. This enhances the convergence significantly. Conceptually, this is achieved through a subtle re-formulation of SRF problem in terms of a continuous-space generalization of the Stochastic Point Location (SPL) problem originally proposed by Oommen. Our scheme is based, in part, on the Continuous Point Location with Adaptive d-ary Search (CPL-AdS), originally presented. The solution to the CPL-AdS, however, is not applicable in our particular domain because of the inherent asymmetry of the SRF problem. Our solution invokes a CPL-AdS-like solution to partition the search interval into d subintervals, evaluates the location of the unknown root x* with respect to these sub-intervals using learning automata, and prunes the search space in each iteration by eliminating at least one partition. Our scheme, the CPL-AdS algorithm for SRF, denoted as SRF-AdS, is shown to converge to the unknown root x* with an arbitrary large degree of accuracy, i.e., with a probability as close to unity as desired. Unlike the classical formulation of the SPL problem proposed by Oommen et al, in our setting, the probability, p, of the “environment” suggesting an accurate response is non-constant. In fact, the latter probability depends of the point x being examined and the region that is a candidate to be pruned. The fact that p is not constant renders the analysis much more involved. The decision rules for pruning are also different from those encountered when p is constant.
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