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吸引和保持前沿学者是一流学科建设的决定性因素——开放评价与原创优先的学术出版至关重要 被引量:7
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作者 刘益东 《科技与出版》 CSSCI 北大核心 2019年第10期10-16,共7页
建设一流学科的决定性因素是学术带头人,而学术带头人在学科评估中的权重过低,甚至出现"低标准、逆淘汰"现象。文章指出前沿学者作为学术带头人至关重要,前沿学者称号可成为诸多人才帽子的替代品。提出基于开放评价法的展示... 建设一流学科的决定性因素是学术带头人,而学术带头人在学科评估中的权重过低,甚至出现"低标准、逆淘汰"现象。文章指出前沿学者作为学术带头人至关重要,前沿学者称号可成为诸多人才帽子的替代品。提出基于开放评价法的展示评价法、AI评价法和前沿管理系统,以促成在观念、方法、标识和学术出版等方面的改变,解决吸引、鼓励、保持顶尖人才的难题,快速在我国建成一流学科和一流大学。 展开更多
关键词 一流学科 前沿学者 大国学术 开放式评价 展示评价法 AI评价 低标准、逆淘汰 前沿管理系统 学术出版
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Comparative evaluation of geological disaster susceptibility using multi-regression methods and spatial accuracy validation 被引量:14
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作者 蒋卫国 饶品增 +2 位作者 曹冉 唐政洪 陈坤 《Journal of Geographical Sciences》 SCIE CSCD 2017年第4期439-462,共24页
Geological disasters not only cause economic losses and ecological destruction, but also seriously threaten human survival. Selecting an appropriate method to evaluate susceptibility to geological disasters is an impo... Geological disasters not only cause economic losses and ecological destruction, but also seriously threaten human survival. Selecting an appropriate method to evaluate susceptibility to geological disasters is an important part of geological disaster research. The aims of this study are to explore the accuracy and reliability of multi-regression methods for geological disaster susceptibility evaluation, including Logistic Regression(LR), Spatial Autoregression(SAR), Geographical Weighted Regression(GWR), and Support Vector Regression(SVR), all of which have been widely discussed in the literature. In this study, we selected Yunnan Province of China as the research site and collected data on typical geological disaster events and the associated hazards that occurred within the study area to construct a corresponding index system for geological disaster assessment. Four methods were used to model and evaluate geological disaster susceptibility. The predictive capabilities of the methods were verified using the receiver operating characteristic(ROC) curve and the success rate curve. Lastly, spatial accuracy validation was introduced to improve the results of the evaluation, which was demonstrated by the spatial receiver operating characteristic(SROC) curve and the spatial success rate(SSR) curve. The results suggest that: 1) these methods are all valid with respect to the SROC and SSR curves, and the spatial accuracy validation method improved their modelling results and accuracy, such that the area under the curve(AUC) values of the ROC curves increased by about 3%–13% and the AUC of the success rate curve values increased by 15%–20%; 2) the evaluation accuracies of LR, SAR, GWR, and SVR were 0.8325, 0.8393, 0.8370 and 0.8539, which proved the four statistical regression methods all have good evaluation capability for geological disaster susceptibility evaluation and the evaluation results of SVR are more reasonable than others; 3) according to the evaluation results of SVR, the central-southern Yunnan Province are the highest sus-ceptibility areas and the lowest susceptibility is mainly located in the central and northern parts of the study area. 展开更多
关键词 geological disaster susceptibility multi-regression methods geographical weighted regression sup-port vector regression spatial accuracy validation Yunnan Province
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