使用遗传算法进行稀疏分布内存初始化

A. Anwar, D. Dasgupta, S. Franklin
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引用次数: 19

摘要

我们描述了使用遗传算法来初始化构成稀疏分布式内存(SDM)存储空间的一组硬位置。SDM是一种使用二进制空间的关联内存技术,它依赖于倾向于聚集在一起的紧密内存项,具有一定程度的抽象。SDM物理实现中的一个重要因素是使用了多少硬位置,这将极大地影响内存容量。它还取决于所使用的二进制空间的维数。为了使SDM系统正常工作,硬位置应该均匀地分布在二进制空间上。我们将SDM的一组硬位置表示为总体成员,并使用遗传算法在巨大的二进制空间中搜索硬位置的最佳(最适)分布。因此,适应度是基于每个硬位置与所有其他硬位置的距离,它衡量分布的均匀性。初步结果非常有希望,遗传算法显著优于大多数现有SDM实现中使用的随机初始化。这种遗传算法的使用与密歇根方法类似,但与标准方法的不同之处在于,搜索的对象是整个群体。
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Using genetic algorithms for sparse distributed memory initialization
We describe the use of genetic algorithms to initialize a set of hard locations that constitutes the storage space of Sparse Distributed Memory (SDM). SDM is an associative memory technique that uses binary spaces, and relies on close memory items tending to be clustered together, with some level of abstraction. An important factor in the physical implementation of SDM is how many hard locations are used, which greatly affects the memory capacity. It is also dependent on the dimension of the binary space used. For the SDM system to function appropriately, the hard locations should be uniformly distributed over the binary space. We represented a set of hard locations of SDM as population members, and employed GA to search for the best (fittest) distribution of hard locations over the vast binary space. Accordingly, fitness is based on how far each hard location is from all other hard locations, which measures the uniformity of the distribution. The preliminary results are very promising, with the GA significantly outperforming random initialization used in most existing SDM implementations. This use of GA, which is similar to the Michigan approach, differs from the standard approach in that the object of the search is the entire population.
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