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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >A pattern reordering approach based on ambiguity detection for online category learning
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A pattern reordering approach based on ambiguity detection for online category learning

机译:基于歧义检测的在线类别学习模式重排序方法

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摘要

Pattern reordering is proposed as an alternative to sequential and batch processing for online category learning. Upon detecting that the categorization of a new input pattern is ambiguous, the input is postponed for a predefined time, after which it is reexamined and categorized for good. This approach is shown to improve the categorization performance over purely sequential processing, while yielding a shorter input response time, or latency, than batch processing. In order to examine the response time of processing schemes, the latency of a typical implementation is derived and compared to lower bounds. Gaussian and softmax models are derived from reject option theory and are considered for detecting ambiguity and triggering pattern postponement. The average latency and Rand Adjusted clustering score of reordered, sequential, and batch processing are compared through computer simulation using two unsupervised competitive learning neural networks and a radar pulse data set.
机译:建议对在线类别学习进行模式重新排序,以替代顺序和批处理。在检测到新输入模式的分类不明确时,将输入延迟预定的时间,然后重新检查输入并进行良好的分类。该方法显示出比纯顺序处理更好的分类性能,同时比批处理产生了更短的输入响应时间或等待时间。为了检查处理方案的响应时间,导出了典型实现的等待时间并将其与下限进行比较。高斯模型和softmax模型是从拒绝选项理论派生而来的,被认为可用于检测歧义并触发模式延迟。通过使用两个无监督竞争学习神经网络和雷达脉冲数据集的计算机仿真,比较了重新排序,顺序和批处理的平均延迟和Rand调整的聚类得分。

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