[PDF][PDF] Machine-Learning Model for Predicting the Rate Constant of Protein-Ligand Dissociation
MY Su, HS Liu, HX Lin, R Wang - Acta Physico-Chimica Sinica, 2020 - whxb.pku.edu.cn
… , a random forest algorithm was adopted to … , and feature selection variance level was 2.
The final QSKR model produced correlation coefficients around 0.62 on the two independent test …
The final QSKR model produced correlation coefficients around 0.62 on the two independent test …
[PDF][PDF] Hydrological forecasting using artificial intelligence techniques
… Gamma test method was used to optimize the input … network and three deep learning auxiliary
algorithms in the interests of … inflow forecasting using multiscale deep feature learning with …
algorithms in the interests of … inflow forecasting using multiscale deep feature learning with …
[PDF][PDF] Categorising Vaccine Confidence with Transformer-Based Machine Learning Model: The Nuances of Vaccine Sentiment on Twitter
… Transformer-based machine learning methods, and test if this … For our use we were aiming
for a “greedy” algorithm that identified … language processing tasks: predicting positive/negative …
for a “greedy” algorithm that identified … language processing tasks: predicting positive/negative …
[PDF][PDF] Deep Learning: New Engine for the Study of Material Microstructures and Physical Properties
G Lu, S Duan - IEEE Trans. Intell. Transp. Syst, 2019 - pdf.hanspub.org
… intelligence, especially deep learning, data-driven methods are commonly used, and in crystal
structure prediction, stability analysis, … reliable prediction capabilities of deep learning can …
structure prediction, stability analysis, … reliable prediction capabilities of deep learning can …
[PDF][PDF] Analysis of the Rise and Fall of International Futures Based on Xgboost Algorithm
J Li, L La - 2018 - pdf.hanspub.org
… , a classification prediction model was constructed to train and test the daily transaction data
of … ability is better. At the same time, it also provides an effective new method for forecasting …
of … ability is better. At the same time, it also provides an effective new method for forecasting …
[PDF][PDF] Radiomics in predicting tumor molecular marker P63 for non-small cell lung cancer
Q Gu, Z Feng, X Hu, M Ma, MM Jumbe… - Zhong Nan Da Xue …, 2019 - researchgate.net
… Delong test was performed on the ROC curves of each model, the results … feature model
and the radiomics model, this study found that the AUC of single radiomics feature in predicting …
and the radiomics model, this study found that the AUC of single radiomics feature in predicting …
[PDF][PDF] PM2. 5 Prediction Based on Genetic Algorithm and Regularized Extreme Learning Machine [J]
F Weng, T Zhang, M Hou, J Luo - Computer Science and …, 2018 - pdf.hanspub.org
… for feature selection. On the basis of the traditional over-limit … Meanwhile, it provides a new
method for predicting PM2.5 … RE-ELM model and the true values of test data 图6. 三种模型对…
method for predicting PM2.5 … RE-ELM model and the true values of test data 图6. 三种模型对…
[PDF][PDF] Short-term load forecasting based on variable weighted synthesis of different kernel SVM
D Ma - Statistics and Applications, 2020 - pdf.hanspub.org
… is expanded, the feature is selected by correlation analysis, and the … test, and the power
load forecasting is realized by variable weight synthesis of multiple model. Example analysis …
load forecasting is realized by variable weight synthesis of multiple model. Example analysis …
[HTML][HTML] Data Mining from a Statistical Perspective
JH Maindonald - Statistics Consulting Unit, 1999 - blogjava.net
… Algorithms that work well with data sets of modest size may … machine learning, is a classification
problem. It comes from a … , keeping the rest for testing predictive accuracy. Estimates of …
problem. It comes from a … , keeping the rest for testing predictive accuracy. Estimates of …
[PDF][PDF] Hyperspectral image classification and application based on relevance vector machine
C Dong, H Zhao - Journal of Remote Sensing, 2010 - gissky.net
… for predicting the outputs of the test samples precisely. … used to test the feature extraction
and classification algorithms. The … spam classification using four machine learning algorithms. …
and classification algorithms. The … spam classification using four machine learning algorithms. …