论文标题

在因子空间中进行线性调整编程

Linear Adjusting Programming in Factor Space

论文作者

He, Jing, Kong, Qi-Wei, Lui, Ho-Chung, Liu, Hai-Tao, Ji, Yi-Mu, Yao, Hai-Chang, Liu, Mo-Zhengfu

论文摘要

为线性编程开发了因子空间和基于统一优化的分类模型的定义。在决策过程中出现的智能行为可以视为一个点y,即主体观察和控制的动态状态,以目标因子促成的因子空间移动并被约束因子所阻断。假设可行的区域被一组超平面剪裁,当Y点到达该地区的墙壁时,超平面将阻止移动,而代理需要调整移动方向,以使目标尽可能忠实。由于无法将壁表示为可区分函数,因此无法应用梯度方法来描述调整过程。因此,我们建议在本文中提出一个新模型,称为线性调整编程(LAP)。 LAP与一种放松的线性编程(LP)相似,LP和LAP之间的差异为:前者的目的是找出最终的最佳点,而后者只是在短时间内采取了直接的动作。您可能会问:阻止者会在哪里遇到?如何调整移动方向?接下来可能会在哪里遇到其他阻滞剂,以及如何再次调整方向?我们要求至少应首次进行调整。如果超平面阻止y与方向d一起前进,则必须调整新方向d'作为阻塞平面中G的投影。如果一次只有一个阻滞剂,那么计算投影是很简单的,但是当同时遇到一个以上的阻滞剂时,如何计算投影呢?我们建议在本文中通过帽子矩阵进行投影计算。线性调整编程将引起许多领域的兴趣。它可能会带来新的光,以解决强大的多项式解决方案解决线性编程问题。

The definition of factor space and a unified optimization based classification model were developed for linear programming. Intelligent behaviour appeared in a decision process can be treated as a point y, the dynamic state observed and controlled by the agent, moving in a factor space impelled by the goal factor and blocked by the constraint factors. Suppose that the feasible region is cut by a group of hyperplanes, when point y reaches the region's wall, a hyperplane will block the moving and the agent needs to adjust the moving direction such that the target is pursued as faithful as possible. Since the wall is not able to be represented to a differentiable function, the gradient method cannot be applied to describe the adjusting process. We, therefore, suggest a new model, named linear adjusting programming (LAP) in this paper. LAP is similar as a kind of relaxed linear programming (LP), and the difference between LP and LAP is: the former aims to find out the ultimate optimal point, while the latter just does a direct action in short period. You may ask: Where will a blocker encounter? How can the moving direction be adjusted? Where further blockers may be encountered next, and how should the direction be adjusted again? We request at least an adjusting should be achieved at the first time. If a hyperplane blocks y going ahead along with the direction d, then we must adjust the new direction d' as the projection of g in the blocking plane. If there is only one blocker at a time, it is straightforward to calculate the projection, but how to calculate the projection when there are more than one blocker encountered simultaneously? We suggest a projection calculation by means of the Hat matrix in this paper. Linear adjusting programming will attract interest in many fields. It might bring a new light to solve the linear programming problem with a strong polynomial solution.

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