遗传算法在模式提取中的应用

M. Borkowski
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引用次数: 3

摘要

本文的研究领域包括模式识别方法,该方法可以发现和分类时间序列中数据条目之间的所有有用关系。利用遗传算法来准备和管理一组独立的模式。对于每个图案,附加的质量值都被添加。该值对应于确定性水平,并在工作中引入。该方案的实际应用包括数据拟合和预测。分析的数据可能是非连续的和不完整的。在不确定情况下,算法对处理后的数据要么完全不响应,要么给出多个答案。系统的体系结构提供了学习阶段与使用阶段交替进行的可能性。该方法采用遗传算法,方便了小生境技术、群体因素和专业化群体选择方法。早期的测试结果,包括预测和拟合简单的时间序列高达50%的缺失数据,在论文的最后给出。
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Application of genetic algorithm to pattern extraction
The area of interest for this paper covers pattern recognition method, which can find and classify all useful relations between data entries in the time series. Genetic algorithm has been deployed to prepare and govern a set of independent patterns. For each pattern additional quality value has been added. This value corresponds to the level of certainty and is introduced in the work. Practical application of this solution consists of data fitting and prediction. Analyzed data can be non continuous and incomplete. In uncertain cases algorithm presents either no response at all or more than one answer to processed data. Architecture of the system offers possibility to interleave learning phase with use. Genetic algorithm applied in the method facilitates niche techniques as well as crowd factor and specialized population selection methods. Early testing results, which include prediction and fitting of simple time series with up to 50 percent of missing data, are presented at the end of the paper.
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