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Discovering Weighted Patterns in Intron Sequences Using Self-Adaptive Harmony Search and Back-Propagation Algorithms

机译:使用自适应和声搜索和背传播算法在内含子序列中发现加权模式

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A hybrid self-adaptive harmony search and back-propagation mining system was proposed to discover weighted patterns in human intron sequences. By testing the weights under a lazy nearest neighbor classifier, the numerical results revealed the significance of these weighted patterns. Comparing these weighted patterns with the popular intron consensus model, it is clear that the discovered weighted patterns make originally the ambiguous 5SS and 3SS header patterns more specific and concrete.
机译:提出了一种混合自适应和声搜索和背传播挖掘系统,以发现人类内含子序列中的加权模式。通过在惰性最近邻分类器下测试权重,数值结果揭示了这些加权模式的重要性。将这些加权模式与流行的内含子共识模型进行比较,显然发现的加权图案最初是制造更具体和混凝土的模糊5S和3SS头部图案。

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