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Speeding Coordination by Combining Analytical and Inductive Learning

机译:通过结合分析和归纳学习来加速协调

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In a highly dynamic information society, the practical applicability of one filtering framework is usually directly proportional to its flexibility, where this assumes not only an easy integration of novel strategies but also the ability to adapt to new resource conditions. A major drawback of many existing systems, trying to make different synergies between filtering strategies, is usually concerned with an inability to easily integrate new strategies and with not taking care of resource availability, being critical for the realisation of the successful commercial deployments. The cornerstone of the presented filtering framework is in the encapsulation of the searching algorithms inside separate filtering agents whose abilities to be utilised in different runtime situations are efficiently learnt by combining both analytical and inductive learning. The evaluation results demonstrate that analytical learning successfully exploits domain knowledge about filtering strategies while helping inductive learning do faster adaptation.
机译:在一个高度动态的信息社会中,一个过滤框架的实际适用性通常与其灵活性成正比,这不仅假设简单地集成了新的策略,而且还具有适应新资源条件的能力。许多现有系统的主要缺点,试图在过滤策略之间进行不同的协同作用,通常涉及无法轻松地整合新的策略,并且不照顾资源可用性,这对于实现成功的商业部署至关重要。所提出的过滤框架的基石是通过组合分析和感应学习,有效地学习在不同的过滤器内的搜索算法的封装在不同的运行时情况中的能力。评估结果表明,分析学习成功利用了关于过滤策略的域名知识,同时帮助归纳学习更快地适应。

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