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Investigation of Examples of E-Education Environment for Scientific Collaboration and Distance Graduate Studies, Part 1

机译:科学合作和远程研究生院电子教学环境示例的研究,第1部分

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The objective is to investigate two emerging information technologies in graduate studies and scientific cooperation. Internet is the first technology. The open source is the second. They help each other in many ways. We investigate the joint influence of both. Results of complexity theory show the limitations of exact analysis. That explains popularity of heuristic algorithms. It is well known that efficiency of heuristics depends on the parameters. Thus we need some automatic procedures for tuning the heuristics. That helps comparing results of different heuristics. This enhance their efficiency, too. An initial presentation of the basic ideas is in (Mockus, 2000). Preliminary results of distance graduate studies are in (Mockus, 2006a). Examples of optimization of sequential statistical decisions are in (Mockus, 2006b). In this paper the theory and applications of Bayesian Heuristic Approach are discussed. In the next paper examples of Bayesian Approach to automated tuning of heuristics will be regarded. The examples of traditional methods of optimization including applications of linear and dynamic programming will be investigated in the last paper. These papers represents three parts of the same work. However each part can be read independently. All the algorithms are implemented as platform independent Java applets or servlets. Readers can easily verify and apply the results for studies and for real life optimization models. The information is on the main web-site http: //pilis. if. ktu. lt/~jmockus and four mirrors.
机译:目的是研究研究生研究和科学合作中的两种新兴信息技术。互联网是第一项技术。开源是第二个。他们在许多方面互相帮助。我们调查了两者的共同影响。复杂性理论的结果表明了精确分析的局限性。这就解释了启发式算法的流行。众所周知,启发式方法的效率取决于参数。因此,我们需要一些自动程序来调整启发式算法。这有助于比较不同启发式方法的结果。这也提高了他们的效率。基本思想的初步介绍在(Mockus,2000)。远程研究生的初步研究结果在(Mockus,2006a)中。优化顺序统计决策的示例在(Mockus,2006b)中。本文讨论了贝叶斯启发式方法的理论和应用。在下一篇论文中,将考虑贝叶斯方法对启发式自动调整的示例。上篇论文将研究包括线性和动态规划应用在内的传统优化方法的示例。这些论文代表了同一工作的三个部分。但是,每个部分都可以独立阅读。所有算法都实现为平台无关的Java applet或servlet。读者可以轻松地验证结果并将其应用于研究和现实生活中的优化模型。该信息位于主网站http:// pilis上。如果。 ktu。 lt /〜jmockus和四个镜子。

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