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Application of Attributes Fusion Technology in Prediction of Deep Reservoirs in Paleogene of Bohai Sea
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作者 ZHANG Daxiang YIN Taiju +1 位作者 SUN Shaochuan SHI Qian 《Acta Geologica Sinica(English Edition)》 SCIE CAS CSCD 2017年第S1期148-149,共2页
1 Introduction The Paleogene strata(with a depth of more than 2500m)in the Bohai sea is complex(Xu Changgui,2006),the reservoir buried deeply,the reservoir prediction is difficult(LAI Weicheng,XU Changgui,2012),and more
关键词 In DATA Application of attributes Fusion Technology in Prediction of Deep Reservoirs in Paleogene of Bohai Sea RGB
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Most similar neighbor imputation of forest attributes using metrics derived from combined airborne LIDAR and multispectral sensors
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作者 Ruben Valbuena Ana Hernando +3 位作者 Jose Antonio Manzanera Eugenio Martínez-Falero Antonio García-Abril Blas Mola-Yudego 《International Journal of Digital Earth》 SCIE EI 2018年第12期1205-1218,共14页
In the context of predicting forest attributes using a combination of airborne LIDAR and multispectral(MS)sensors,we suggest the inclusion of normalized difference vegetation index(NDVI)metrics along with the more tra... In the context of predicting forest attributes using a combination of airborne LIDAR and multispectral(MS)sensors,we suggest the inclusion of normalized difference vegetation index(NDVI)metrics along with the more traditional LIDAR height metrics.Here the data fusion method consists of back-projecting LIDAR returns onto original MS images,avoiding co-registration errors.The prediction method is based on nonparametric imputation(the most similar neighbor).Predictor selection and accuracy assessment include hypothesis tests and over-fitting prevention methods.Results show improvements when using combinations of LIDAR and MS compared to using either of them alone.The MS sensor has little explanatory capacity for forest variables dependent on tree height,already well determined from LIDAR alone.However,there is potential for variables dependent on tree diameters and their density.The combination of LIDAR and MS sensors can be very beneficial for predicting variables describing forests structural heterogeneity,which are best described from synergies between LIDAR heights and NDVI dispersion.Results demonstrate the potential of NDVI metrics to increase prediction accuracy of forest attributes.Their inclusion in the predictor dataset may,however,in a few cases be detrimental to accuracy,and therefore we recommend to carefully assess the possible advantages of data fusion on a case-by-case basis. 展开更多
关键词 Airborne laser scanning forest attribute prediction multispectral imagery data fusion nearest neighbor
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User Attribute Prediction Method Based on Stacking Multimodel Fusion
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作者 Qiuhong Chen Caimao Li +2 位作者 Hao Lin Hao Li Yuquan Hou 《国际计算机前沿大会会议论文集》 2022年第2期172-184,共13页
The user’s age and gender play a vital role within the user portrait.In view of the lack of basic attribute information,such as the age and gender of users,this paper constructs an attribute prediction method based o... The user’s age and gender play a vital role within the user portrait.In view of the lack of basic attribute information,such as the age and gender of users,this paper constructs an attribute prediction method based on stacking multimodel integration.The user’s browsing and clicking history is analyzed to predict the user’s basic attributes.First,LR,RF,XGBoost,and ExtraTree were selected as the base classifiers for the first layer of the stacking framework,and the training results of the first layer were input as new training data into the second layer LightGBM for training.Experiments show that the proposed model can improve the accuracy of prediction results. 展开更多
关键词 Machine learning attribute prediction Model fusion LightGBM
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