科技报告详细信息
Proceedings: Fourth Workshop on Mining Scientific Datasets
Kamath, C
Lawrence Livermore National Laboratory
关键词: Data Analysis;    Statistics;    Mining;    Remote Sensing;    99 General And Miscellaneous//Mathematics, Computing, And Information Science;   
DOI  :  10.2172/15007301
RP-ID  :  UCRL-ID-144763
RP-ID  :  W-7405-ENG-48
RP-ID  :  15007301
美国|英语
来源: UNT Digital Library
PDF
【 摘 要 】

Commercial applications of data mining in areas such as e-commerce, market-basket analysis, text-mining, and web-mining have taken on a central focus in the JCDD community. However, there is a significant amount of innovative data mining work taking place in the context of scientific and engineering applications that is not well represented in the mainstream KDD conferences. For example, scientific data mining techniques are being developed and applied to diverse fields such as remote sensing, physics, chemistry, biology, astronomy, structural mechanics, computational fluid dynamics etc. In these areas, data mining frequently complements and enhances existing analysis methods based on statistics, exploratory data analysis, and domain-specific approaches. On the surface, it may appear that data from one scientific field, say genomics, is very different from another field, such as physics. However, despite their diversity, there is much that is common across the mining of scientific and engineering data. For example, techniques used to identify objects in images are very similar, regardless of whether the images came from a remote sensing application, a physics experiment, an astronomy observation, or a medical study. Further, with data mining being applied to new types of data, such as mesh data from scientific simulations, there is the opportunity to apply and extend data mining to new scientific domains. This one-day workshop brings together data miners analyzing science data and scientists from diverse fields to share their experiences, learn how techniques developed in one field can be applied in another, and better understand some of the newer techniques being developed in the KDD community. This is the fourth workshop on the topic of Mining Scientific Data sets; for information on earlier workshops, see http://www.ahpcrc.org/conferences/. This workshop continues the tradition of addressing challenging problems in a field where the diversity of applications is matched only by the opportunities that await a practitioner.

【 预 览 】
附件列表
Files Size Format View
15007301.pdf 18312KB PDF download
  文献评价指标  
  下载次数:11次 浏览次数:20次