自动化测试最佳实践 来自全球的经典自动化测试案例解析_13303587.pdf
2019-12-21 19:38:29 106.49MB selenium Python
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改脚本实现了wkt转arcgis,提供point, multipoint,linestring,multilinestring,polygon,multipolygon的转换支持。并提供完整实例和测试数据。供交流技术参考。
2019-12-21 19:36:27 40KB wkt,arcgis
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VS2017自带库文件,用于修复python安装pycrypto包时发送的出错问题
2019-12-21 19:26:00 4KB VC库文件
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n many data analysis tasks, one is often confronted with very high dimensional data. Feature selection techniques are designed to find the relevant feature subset of the original features which can facilitate clustering, classification and retrieval. The feature selection problem is essentially a combinatorial optimization problem which is computationally expensive. Traditional feature selection methods address this issue by selecting the top ranked features based on certain scores computed independently for each feature. These approaches neglect the possible correlation between different features and thus can not produce an optimal feature subset. Inspired from the recent developments on manifold learning and L1-regularized models for subset selection, we propose here a new approach, called {\em Multi-Cluster/Class Feature Selection} (MCFS), for feature selection. Specifically, we select those features such that the multi-cluster/class structure of the data can be best preserved. The corresponding optimization problem can be efficiently solved since it only involves a sparse eigen-problem and a L1-regularized least squares problem. It is important to note that MCFS can be applied in superised, unsupervised and semi-supervised cases. If you find these algoirthms useful, we appreciate it very much if you can cite our following works: Papers Deng Cai, Chiyuan Zhang, Xiaofei He, "Unsupervised Feature Selection for Multi-cluster Data", 16th ACM SIGKDD Conference on Knowledge Discovery and Data Mining (KDD'10), July 2010. Bibtex source Xiaofei He, Deng Cai, and Partha Niyogi, "Laplacian Score for Feature Selection", Advances in Neural Information Processing Systems 18 (NIPS'05), Vancouver, Canada, 2005 Bibtex source
2019-12-21 19:22:32 5KB featur
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来自IEEE PES数据库的电能质量扰动数据源,是研究验证电能质量分析方法的重要资源。
2019-12-21 18:50:04 882KB 数据源
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本人找工作时网上找到的一些java简历,适合新手,高手勿喷!来自网络上的几十份Java开发工程师简历。
2019-12-21 18:49:06 7.86MB Java 简历
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