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基于双层遗传算法的混合属性数据分类 被引量:3
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作者 王丽丽 罗可 杨光军 《计算机工程与应用》 CSCD 北大核心 2006年第30期155-156,163,共3页
论文提出了一种新的遗传算法对含有离散属性和连续属性值的混合数据进行分类。在染色体设计上采用两层结构染色体,同时实现搜索连续属性数据的最优分割点集和对混合数据进行分类。
关键词 数据分类 遗传算法 离散化
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山东烟草数据安全探索与实践 被引量:3
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作者 宋楠 仇道霞 《现代信息科技》 2020年第1期129-134,共6页
为进一步提升信息安全水平,山东烟草运用现代化技术手段识别现有信息系统数据安全风险,探索解决数据泄漏、弱口令、敏感隐私数据泛滥等数据安全问题,制定针对性的管理措施和安全防护策略,确保数据的完整性、可用性、保密性和可靠性,提... 为进一步提升信息安全水平,山东烟草运用现代化技术手段识别现有信息系统数据安全风险,探索解决数据泄漏、弱口令、敏感隐私数据泛滥等数据安全问题,制定针对性的管理措施和安全防护策略,确保数据的完整性、可用性、保密性和可靠性,提升了山东烟草数据安全防护水平。 展开更多
关键词 烟草 数据安全 基本实践 数据分类 成熟度模型
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An ensemble method for data stream classification in the presence of concept drift 被引量:3
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作者 Omid ABBASZADEH Ali AMIRI Ali Reza KHANTEYMOORI 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2015年第12期1059-1068,共10页
One recent area of interest in computer science is data stream management and processing. By ‘data stream', we refer to continuous and rapidly generated packages of data. Specific features of data streams are imm... One recent area of interest in computer science is data stream management and processing. By ‘data stream', we refer to continuous and rapidly generated packages of data. Specific features of data streams are immense volume, high production rate, limited data processing time, and data concept drift; these features differentiate the data stream from standard types of data. An issue for the data stream is classification of input data. A novel ensemble classifier is proposed in this paper. The classifier uses base classifiers of two weighting functions under different data input conditions. In addition, a new method is used to determine drift, which emphasizes the precision of the algorithm. Another characteristic of the proposed method is removal of different numbers of the base classifiers based on their quality. Implementation of a weighting mechanism to the base classifiers at the decision-making stage is another advantage of the algorithm. This facilitates adaptability when drifts take place, which leads to classifiers with higher efficiency. Furthermore, the proposed method is tested on a set of standard data and the results confirm higher accuracy compared to available ensemble classifiers and single classifiers. In addition, in some cases the proposed classifier is faster and needs less storage space. 展开更多
关键词 data stream classificaion Ensemble classifiers Concept drift
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