首页> 外文期刊>Discrete mathematics, algorithms, and applications >OPTIMAL SET-PARTITIONING BASED ON GROUP QUALITY LIKELIHOOD USING PARTITION-GROWING ALGORITHM
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OPTIMAL SET-PARTITIONING BASED ON GROUP QUALITY LIKELIHOOD USING PARTITION-GROWING ALGORITHM

机译:基于分区增长算法的群质量似然的最优集合划分

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摘要

We consider the problem of partitioning a set of elements X into a minimum of m blocks to maximize the probability that each block constitutes a well-grouped subset of X. We employ certain characteristics of the Group Quality Likelihood to limit our search for an optimal partition within a smaller set of partitions. We develop a novel Partition-Growing algorithm based on the Branch and Bound strategy that produces the optimal partition in an efficient manner. We demonstrate how the algorithm can be applied to recognize Broken Characters in degraded document images. Experimental results conducted on Thai historical documents are very promising.
机译:我们考虑将一组元素X划分为最少m个块的问题,以最大化每个块构成X的分组良好的子集的可能性。我们采用组质量似然性的某些特征来限制对最佳划分的搜索在较小的一组分区中。我们基于“分支和边界”策略开发了一种新颖的分区增长算法,该算法可以高效地生成最佳分区。我们演示了如何将算法应用于识别降级的文档图像中的残破字符。在泰国历史文献上进行的实验结果很有希望。

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