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大数据时代高校研究生思想政治教育探究

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摘要 依靠大数据的全样本分析优化高校研究生的思想政治教育工作是实现立德树人教育目标的重要手段和时代要求。在运用大数据为高校研究生思想政治教育提供有效预判的同时,理解数据背后所隐藏的价值以及提取这种价值的专门技能是影响大数据实效的决定性因素。为此,高校研究生思想政治教育者须强化数据意识,树立科学开放的工作原则、创新与时俱进的联动模式、运用人文个性的教育方式来提升工作实效性。 To optimize college graduates majoring in ideological and political education based on the analysis of the samples from the big data is an important means to realize the goals of cultivating talents with moral education and the requirements oftimes. Moral education in the use of big data to provide effective pre-judgment and the ideological and political education for graduates andthe specific skill to understand the hidden value behind the data and to extractthe value is decisive factors affecting the effectiveness of big data. Therefore, ideological and political education must strengthen the consciousness of data, establish the work principle of open science, and innovate the linkage mode of keeping pace with the times, using humanistic personality education way to enhance the effectiveness of the work.
作者 朱芊
出处 《高教学刊》 2017年第16期169-172,共4页 Journal of Higher Education
基金 南华大学2016年度学位与研究生教育教研教改项目"大数据时代高校研究生思想政治教育模式创新探究"(编号:2016JG038)
关键词 大数据 研究生 思想政治教育 big data college graduates the ideological and political education
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