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Data processing of small samples based on grey distance information approach 被引量:14
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作者 Ke Hongfa, Chen Yongguang & Liu Yi 1. Coll. of Electronic Science and Engineering, National Univ. of Defense Technology, Changsha 410073, P. R. China 2. Unit 63880, Luoyang 471003, P. R. China 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2007年第2期281-289,共9页
Data processing of small samples is an important and valuable research problem in the electronic equipment test. Because it is difficult and complex to determine the probability distribution of small samples, it is di... Data processing of small samples is an important and valuable research problem in the electronic equipment test. Because it is difficult and complex to determine the probability distribution of small samples, it is difficult to use the traditional probability theory to process the samples and assess the degree of uncertainty. Using the grey relational theory and the norm theory, the grey distance information approach, which is based on the grey distance information quantity of a sample and the average grey distance information quantity of the samples, is proposed in this article. The definitions of the grey distance information quantity of a sample and the average grey distance information quantity of the samples, with their characteristics and algorithms, are introduced. The correlative problems, including the algorithm of estimated value, the standard deviation, and the acceptance and rejection criteria of the samples and estimated results, are also proposed. Moreover, the information whitening ratio is introduced to select the weight algorithm and to compare the different samples. Several examples are given to demonstrate the application of the proposed approach. The examples show that the proposed approach, which has no demand for the probability distribution of small samples, is feasible and effective. 展开更多
关键词 Data processing Grey theory Norm theory Small samples Uncertainty assessments Grey distance measure information whitening ratio.
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高校教育信息化投资效益研究 被引量:12
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作者 李普聪 钟元生 《教育学术月刊》 北大核心 2009年第2期83-85,共3页
教育信息化的投资效益评估是我们国教育信息化建设亟需解决的一个重要研究课题。文章在深入分析教育信息化投入与效益构成的基础上,提出一套教育信息化投入与效益的测算指标体系,然后给出通过该指标体系进行教育信息化投资效益评价的计... 教育信息化的投资效益评估是我们国教育信息化建设亟需解决的一个重要研究课题。文章在深入分析教育信息化投入与效益构成的基础上,提出一套教育信息化投入与效益的测算指标体系,然后给出通过该指标体系进行教育信息化投资效益评价的计量模型,为教育信息化投资效益评价提供一种思路。 展开更多
关键词 教育信息化 评价体系 投资效益比
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Applying deep learning and benchmark machine learning algorithms for landslide susceptibility modelling in Rorachu river basin of Sikkim Himalaya, India 被引量:9
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作者 Kanu Mandal Sunil Saha Sujit Mandal 《Geoscience Frontiers》 SCIE CAS CSCD 2021年第5期264-280,共17页
Landslide is considered as one of the most severe threats to human life and property in the hilly areas of the world.The number of landslides and the level of damage across the globe has been increasing over time.Ther... Landslide is considered as one of the most severe threats to human life and property in the hilly areas of the world.The number of landslides and the level of damage across the globe has been increasing over time.Therefore,landslide management is essential to maintain the natural and socio-economic dynamics of the hilly region.Rorachu river basin is one of the most landslide-prone areas of the Sikkim selected for the present study.The prime goal of the study is to prepare landslide susceptibility maps(LSMs)using computer-based advanced machine learning techniques and compare the performance of the models.To properly understand the existing spatial relation with the landslide,twenty factors,including triggering and causative factors,were selected.A deep learning algorithm viz.convolutional neural network model(CNN)and three popular machine learning techniques,i.e.,random forest model(RF),artificial neural network model(ANN),and bagging model,were employed to prepare the LSMs.Two separate datasets including training and validation were designed by randomly taken landslide and nonlandslide points.A ratio of 70:30 was considered for the selection of both training and validation points.Multicollinearity was assessed by tolerance and variance inflation factor,and the role of individual conditioning factors was estimated using information gain ratio.The result reveals that there is no severe multicollinearity among the landslide conditioning factors,and the triggering factor rainfall appeared as the leading cause of the landslide.Based on the final prediction values of each model,LSM was constructed and successfully portioned into five distinct classes,like very low,low,moderate,high,and very high susceptibility.The susceptibility class-wise distribution of landslides shows that more than 90%of the landslide area falls under higher landslide susceptibility grades.The precision of models was examined using the area under the curve(AUC)of the receiver operating characteristics(ROC)curve and statistical methods like root mean square error(RMSE)and mean absolute error(MAE).In both datasets(training and validation),the CNN model achieved the maximum AUC value of 0.903 and 0.939,respectively.The lowest value of RMSE and MAE also reveals the better performance of the CNN model.So,it can be concluded that all the models have performed well,but the CNN model has outperformed the other models in terms of precision. 展开更多
关键词 Machine learning techniques information gain ratio(IGR) Landslide susceptibility map(LSM) Convolutional neural network(CNN) Receiver operating characteristics(ROC)
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某病害地基的原因分析与加固方法应用研究 被引量:3
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作者 王昆旺 李永华 王敏泽 《工程勘察》 2019年第9期38-43,共6页
本文通过对某工程病害地基致害原因的详细分析,揭示了引发病害地基的常见原因,提出了树根桩加扩展式托换基础的加固、纠偏(倾斜)方法,在一定技术条件下,对软弱土病害地基和湿陷性黄土及其它特殊性土地基的加固治理效果十分显著,而且通... 本文通过对某工程病害地基致害原因的详细分析,揭示了引发病害地基的常见原因,提出了树根桩加扩展式托换基础的加固、纠偏(倾斜)方法,在一定技术条件下,对软弱土病害地基和湿陷性黄土及其它特殊性土地基的加固治理效果十分显著,而且通过加固施工过程的有效控制,可降低或避免加固施工过程中的附加沉降和结构次生裂变。该方法对其它类似建筑物的不均匀沉降和倾斜的加固治理具有借鉴意义。 展开更多
关键词 病害地基 不均匀沉降 加固纠偏 倾斜率 扩展式基础 树根桩 信息化施工
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Lymph Diseases Prediction Using Random Forest and Particle Swarm Optimization
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作者 Waheeda Almayyan 《Journal of Intelligent Learning Systems and Applications》 2016年第3期51-62,共12页
This research aims to develop a model to enhance lymphatic diseases diagnosis by the use of random forest ensemble machine-learning method trained with a simple sampling scheme. This study has been carried out in two ... This research aims to develop a model to enhance lymphatic diseases diagnosis by the use of random forest ensemble machine-learning method trained with a simple sampling scheme. This study has been carried out in two major phases: feature selection and classification. In the first stage, a number of discriminative features out of 18 were selected using PSO and several feature selection techniques to reduce the features dimension. In the second stage, we applied the random forest ensemble classification scheme to diagnose lymphatic diseases. While making experiments with the selected features, we used original and resampled distributions of the dataset to train random forest classifier. Experimental results demonstrate that the proposed method achieves a remark-able improvement in classification accuracy rate. 展开更多
关键词 CLASSIFICATION Random Forest Ensemble PSO Simple Random Sampling information Gain ratio Symmetrical Uncertainty
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