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首页> 外文期刊>Proceedings of the National Academy of Sciences, India, Section A. Physical Sciences >Granular Mining and Big Data Analytics: Rough Models and Challenges
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Granular Mining and Big Data Analytics: Rough Models and Challenges

机译:细粒度的采矿和大数据分析:粗糙模型和挑战

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摘要

abstract_textpData analytics in granular computing framework is considered for several mining applications, such as in video analysis, bioinformatics and online social networks which have all the characteristics of Big data. The role of granulation, lower approximation and r-f information measure is exhibited. While the lower approximation over a video sequence signifies the object model for unsupervised tracking, it characterizes the probability (relative frequency) of definite regions in ranking miRNAs for normal and cancer classification. For neural learning, the information on definite region is used as the initial knowledge for encoding while generating the networks through evolution. Granules considered are of different sizes and dimensions with fuzzy and crisp boundaries. The tracking method is effective in handling different ambiguous situations, e.g., overlapping objects, newly appeared object(s), multiple objects in different directions and speeds, in unsupervised mode. The ranking algorithm could find only 1% miRNAs to result in significantly higher F-score than the entire set. Fuzzy-rough communities detected over the granular model of social networks are suitable in dealing with overlapping virtual communities in Big data. The knowledge encoding based on fuzzy-rough set provides superior performance than that of rough set. Future directions of research and challenges including the significance of z-numbers in precisiation of granules are stated. The article includes some of the results published elsewhere./p/abstract_text
机译:& abstract_text & p数据分析细粒度的计算框架被认为是几个矿业应用程序,比如在视频分析、生物信息学和在线社交网络的所有特点大数据。近似和r-f信息测量展出。视频序列表示的对象模型无监督跟踪,它描述了概率(相对频率)的确定地区排名microrna正常和癌症分类。明确的区域作为信息最初的知识进行编码而生成网络通过进化。被认为是不同的大小和尺寸模糊和清晰的界限。方法是有效处理不同模棱两可的情况,例如,重叠的对象,新出现的对象(s),多个对象不同的方向和速度,在无监督模式。microrna导致更高的f值比整个集合。发现社会的细粒度模型网络是适合处理重叠大数据的虚拟社区。基于模糊粗糙集的编码性能优越的粗糙集。未来的研究方向和挑战包括z-numbers的意义precisiation的颗粒。包括发表的一些结果其他地方。;/ p & / abstract_text

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