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Efficiency of goal-oriented communicating agents in different graph topologies: A study with Internet crawlers

机译:面向目标的通信代理在不同图形拓扑中的效率:有关Internet爬网程序的研究

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To what extent does the communication make a goal-oriented community efficient in different topologies? In order to gain insight into this problem, we study the influence of learning method as well as that of the topology of the environment on the communication efficiency of crawlers in quest of novel information in different topics on the Internet. Individual crawlers employ selective learning, function approximation-based reinforcement learning (RL), and their combination. Selective learning, in effect, modifies the starting URL lists of the crawlers, whilst RL alters the URL orderings. Real data have been collected from the web and scale-free worlds, scale-free small world (SFSW), and random world environments (RWEs) have been created by link reorganization. In our previous experiments [Zs. Palotai, Cs. Farkas, A. Lorinez, Is selection optimal in scale-free small worlds?, ComPlexUs 3 (2006) 158-168], the crawlers searched for novel, genuine documents and direct communication was not possible. Herein, our finding is reproduced: selective learning performs the best and RL the worst in SFSW, whereas the combined, i.e., selective learning coupled with RL is the best-by a slight margin-in scale-free worlds. This effect is demonstrated to be more pronounced when the crawlers search for different topic-specific documents: the relative performance of the combined learning algorithm improves in all worlds, i.e., in SFSW, in SFW, and in RWE. If the tasks are more complex and the work sharing is enforced by the environment then the combined learning algorithm becomes at least equal, even superior to both the selective and the RL algorithms in most cases, irrespective of the efficiency of communication. Furthermore, communication improves the performance by a large margin and adaptive communication is advantageous in the majority of the cases. (c) 2006 Elsevier B.V. All rights reserved.
机译:通信在多大程度上使面向目标的社区在不同的拓扑结构中效率更高?为了深入了解此问题,我们研究了学习方法以及环境拓扑对搜寻器在互联网上不同主题中寻求新颖信息的通信效率的影响。各个爬虫采用选择性学习,基于函数逼近的强化学习(RL)及其组合。选择性学习实际上会修改搜寻器的起始URL列表,而RL会更改URL的顺序。通过链接重组,从网络和无标度世界,无标度小世界(SFSW)收集了真实数据,并创建了随机世界环境(RWE)。在我们之前的实验中[Zs。帕洛泰(CS) Farkas,A。Lorinez,《选择在无尺度的小世界中最佳吗?》,ComPlexUs 3(2006)158-168],爬虫无法寻找新颖,真实的文献,也无法进行直接沟通。在这里,我们的发现被再现:选择性学习在SFSW中表现最佳,而RL最差,而结合学习,即选择性学习与RL相结合,在无标度世界中是最好的。当爬虫搜索不同的特定主题文档时,这种效果更加明显:在所有领域(即SFSW,SFW和RWE),组合学习算法的相对性能都得到了提高。如果任务更复杂并且工作共享是由环境强制执行的,则无论通信效率如何,在大多数情况下,组合学习算法都至少相等,甚至优于选择性算法和RL算法。此外,通信在很大程度上提高了性能,并且在大多数情况下自适应通信是有利的。 (c)2006 Elsevier B.V.保留所有权利。

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