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A Sparse Distributed Memory Capable of Handling Small Cues, SDMSCue

机译:能够处理小提示的稀疏分布式内存SDMSCue

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In this work, we present Sparse Distributed Memory for Small Cues (SDMSCue), a new variant of Sparse Distributed Memory (SDM) that is capable of handling small cues. SDM is a content-addressable memory technique that relies on similar memory items tending to be clustered together in the same region or subspace of the semantic space. SDM has been used before as associative memory or control structure for software agents. In this context, small cues refer to input cues that are presented to SDM for reading associations; but have many missing parts or fields from them. The original SDM failed to handle such a problem. Hence, our work with SDMSCue conies to overcome this pitfall. The main idea in our work; is the projection of the semantic space on a smaller subspace; that is selected based on the input cue pattern, to allow for read/write using an input cue that is missing a large portion. The test results show that SDMSCue is capable of recovering and recalling information from memory using an arbitrary small part of that information; when the original SDM would fail. SDMSCue is augmented with the use of genetic algorithms for memory allocation and initialization. We think that the introduction of SDMSCue opens the door to more research areas and practical uses for SDM in general.
机译:在这项工作中,我们介绍了用于小提示的稀疏分布式内存(SDMSCue),这是一种能够处理小提示的稀疏分布式内存(SDM)的新变体。 SDM是一种内容可寻址的存储技术,它依赖于趋于在语义空间的相同区域或子空间中聚集在一起的相似存储项。 SDM以前曾被用作软件代理的关联存储器或控制结构。在这种情况下,小提示是指呈现给SDM以便阅读关联的输入提示;但其中有许多缺少的部分或字段。原始SDM无法处理此类问题。因此,我们与SDMSCue的合作旨在克服这一陷阱。我们工作的主要思想;是语义空间在较小子空间上的投影;根据输入提示模式选择的“输入”,以允许使用缺少很大一部分的输入提示进行读/写。测试结果表明,SDMSCue能够使用任意一小部分信息从内存中恢复和调用信息;当原始SDM失败时。 SDMSCue通过使用遗传算法进行内存分配和初始化得到了增强。我们认为,SDMSCue的引入为SDM的更多研究领域和实际应用打开了大门。

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