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INTEGRATING CLASSIFICATION-BASED COMPILED LEVEL REASONING WITH FUNCTION-BASED DEEP LEVEL REASONING

机译:将基于分类的编译级推理与基于函数的深层推理集成

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Problem solving based on compiled associations between elements of the decision space and data is an efficient mode of reasoning for a large percentage of situations faced by an expert. But in some (usually small) percentage of cases, compiled associations are not enough by themselves to lead to correct results. Reasoning from #x201C;deeper#x201D; levels of understanding offers the advantage of producing correct results even in atypical cases, but at the cost of expanding more computational resources. Thus the trade-off between compiled level systems and deep level systems is between computational efficiency (at the compiled level) and problem-solving generality (at the deep level). We describe a hybrid system containing elements of both deep level reasoning and compiled level reasoning. More particularly, we propose a problem-solving architecture for category-based diagnostic problem solving which at the compiled level centers on classification problem solving and at the deep level uses a type of function-based reasoning. We concentrate in this report on the interaction between the compiled and deep level units and on the mechanisms of function-based reasoning that we employ. We show how our function-based consequence-finding problem solver can be focused by problem solving at the compiled level and how, through such interaction, we obtain the computational efficiency characteristic of compiled level problem solving while retaining the robustness characteristic of deep level problem solving.
机译:基于决策空间元素和数据之间的编译关联解决问题是专家面临的很大一部分情况的有效推理模式。但在某些(通常很小)的情况下,编译的关联本身不足以导致正确的结果。从“更深层次”的理解进行推理提供了即使在非典型情况下也能产生正确结果的优势,但代价是扩展了更多的计算资源。因此,编译级系统和深层系统之间的权衡是计算效率(在编译级)和解决问题的通用性(在深层)。我们描述了一个包含深层次推理和编译层次推理元素的混合系统。更具体地说,我们提出了一种基于类别的诊断问题解决的问题解决架构,该架构在编译级别以分类问题解决为中心,在深层次使用一种基于函数的推理。在本报告中,我们专注于编译单元和深层单元之间的相互作用,以及我们采用的基于函数的推理机制。我们展示了我们的基于函数的后果发现问题求解器如何通过编译级别的问题解决来集中注意力,以及如何通过这种交互获得编译级别问题解决的计算效率特征,同时保留深层次问题解决的鲁棒性特征。

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