Parallel feature selection method based on MapReduce
A feature selection method and feature set technology, applied in knowledge-based model computer systems, special data processing applications, instruments, etc., can solve problems such as inability to handle large-scale data sets
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[0019] The present invention will be further described below in conjunction with embodiment.
[0020] The parallel feature selection method will be the main choice for processing large-scale data. Many parallel algorithms use different parallel processing technologies, such as multithreading, MPI, MapReduce, workflow technology, etc. Different parallel technologies have different performance and scope of application. MPI is suitable for dealing with calculation-intensive problems, especially simulation calculations. Due to its high requirements on the operating environment and complex programming, it is not easy to use in practical applications. MapReduce is a distributed data processing model proposed in the field of information retrieval, and Hadoop is currently the most widely used open source MapReduce software. However, the MapReduce model under the Hadoop architecture does not support iterative Map and Reduce tasks, which are required by many data mining algorithms. Pro...
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