Analysis of Innovation Paths Big Data Mining to Big Data Algorithm of Business Administration

X. Yu
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Abstract

In the process of enterprise management, there are some problems such as poor accuracy and long selection time of computer science innovation path, which seriously affect the effective selection of computer science path innovation. Based on a big data mining method, this paper analyzes the path innovation of computer science from three dimensions, constructs the path set of path innovation by least dichotomy, and obtains the optimal innovation path by derivation. Then, the maximum likelihood theory is used to calculate the innovation path and compared it with the previous path innovation methods, comparing the accuracy and calculation time of different innovation paths. MATLAB simulation results show that the big data mining method can improve the accuracy and comprehensiveness of innovation path selection, reaching more than 90%, and control the selection time of the innovation path within 25 seconds, and the overall result is better than the previous path innovation methods. Therefore, the big data mining method can improve the accuracy of computer science innovation path selection and meet the needs of computer science path innovation in business administration. However, in the research of big data mining methods, this paper ignores the analysis of multi-path innovation, which leads to insufficient research depth. In the future, it will further analyze multi-path innovation.
大数据挖掘到工商管理大数据算法的创新路径分析
在企业管理过程中,存在计算机科学创新路径选择准确性差、选择时间长等问题,严重影响了计算机科学路径创新的有效选择。基于大数据挖掘方法,从三维角度对计算机科学的路径创新进行分析,通过最小二分类构造路径创新的路径集,并通过推导得到最优路径。然后,利用最大似然理论对创新路径进行计算,并与以往的路径创新方法进行比较,比较不同创新路径的计算精度和计算时间。MATLAB仿真结果表明,大数据挖掘方法可以提高创新路径选择的准确性和全面性,达到90%以上,并将创新路径的选择时间控制在25秒以内,整体效果优于以往的路径创新方法。因此,大数据挖掘方法可以提高计算机科学创新路径选择的准确性,满足企业管理中计算机科学路径创新的需求。然而,在大数据挖掘方法的研究中,本文忽略了对多路径创新的分析,导致研究深度不足。未来将进一步分析多路径创新。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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