A novel hybrid method for flight departure delay prediction using Random Forest Regression and Maximal Information Coefficient

2021 ◽  
pp. 106822
Author(s):  
Zhen Guo ◽  
Bin Yu ◽  
Mengyan Hao ◽  
Wensi Wang ◽  
Yu Jiang ◽  
...  
Author(s):  
Jimmy H. Moedjahedy ◽  
Arief Setyanto ◽  
Komang Aryasa

<p><em>aan yang menipu maupun secara teknis untuk mencuri data identitas pribadi konsumen dan kredensial akun keuangan. Phishing dirancang untuk mengarahkan konsumen ke website phishing yang menipu penerima untuk membocorkan data keuangan seperti nama pengguna dan kata sandi. Dalam dataset phishing, terdapat fitur-fitur yang bisa mengkategorikan apakah sebuah website adalah website phishing atau bukan. Tujuan dari penelitian ini adalah untuk membandingkan hasil seleksi fitur-fitur yang ada dengan menggunakan dua metode yaitu metode gabungan Maximal Information coefficient dan Total Information Coefficient dengan metode korelasi Spearman. Hasil seleksi diuji dengan lima algoritma machine learning yaitu, Logistic Regression, Naïve Bayes, J48, AdaBoost MI</em> dan <em>Random Forest. Hasil dari penelitian ini adalah metode gabungan Maximal Information coefficent dan Total Information Coefficient memiliki nilai akurasi 97.25 % dengan menggunakan Random Forest mengungguli metode korelasi Spearman dengan nilai akurasi 95,33%.</em></p>


2021 ◽  
Vol 11 (1) ◽  
Author(s):  
Chinmay P. Swami ◽  
Nicholas Lenhard ◽  
Jiyeon Kang

AbstractProsthetic arms can significantly increase the upper limb function of individuals with upper limb loss, however despite the development of various multi-DoF prosthetic arms the rate of prosthesis abandonment is still high. One of the major challenges is to design a multi-DoF controller that has high precision, robustness, and intuitiveness for daily use. The present study demonstrates a novel framework for developing a controller leveraging machine learning algorithms and movement synergies to implement natural control of a 2-DoF prosthetic wrist for activities of daily living (ADL). The data was collected during ADL tasks of ten individuals with a wrist brace emulating the absence of wrist function. Using this data, the neural network classifies the movement and then random forest regression computes the desired velocity of the prosthetic wrist. The models were trained/tested with ADLs where their robustness was tested using cross-validation and holdout data sets. The proposed framework demonstrated high accuracy (F-1 score of 99% for the classifier and Pearson’s correlation of 0.98 for the regression). Additionally, the interpretable nature of random forest regression was used to verify the targeted movement synergies. The present work provides a novel and effective framework to develop an intuitive control for multi-DoF prosthetic devices.


Measurement ◽  
2020 ◽  
pp. 108899
Author(s):  
Madi Keramat-Jahromi ◽  
Seyed Saeid Mohtasebi ◽  
Hossein Mousazadeh ◽  
Mahdi Ghasemi-Varnamkhasri ◽  
Maryam Rahimi-Movassagh

2019 ◽  
Vol 12 (3) ◽  
pp. 1209-1225 ◽  
Author(s):  
Christoph A. Keller ◽  
Mat J. Evans

Abstract. Atmospheric chemistry models are a central tool to study the impact of chemical constituents on the environment, vegetation and human health. These models are numerically intense, and previous attempts to reduce the numerical cost of chemistry solvers have not delivered transformative change. We show here the potential of a machine learning (in this case random forest regression) replacement for the gas-phase chemistry in atmospheric chemistry transport models. Our training data consist of 1 month (July 2013) of output of chemical conditions together with the model physical state, produced from the GEOS-Chem chemistry model v10. From this data set we train random forest regression models to predict the concentration of each transported species after the integrator, based on the physical and chemical conditions before the integrator. The choice of prediction type has a strong impact on the skill of the regression model. We find best results from predicting the change in concentration for long-lived species and the absolute concentration for short-lived species. We also find improvements from a simple implementation of chemical families (NOx = NO + NO2). We then implement the trained random forest predictors back into GEOS-Chem to replace the numerical integrator. The machine-learning-driven GEOS-Chem model compares well to the standard simulation. For ozone (O3), errors from using the random forests (compared to the reference simulation) grow slowly and after 5 days the normalized mean bias (NMB), root mean square error (RMSE) and R2 are 4.2 %, 35 % and 0.9, respectively; after 30 days the errors increase to 13 %, 67 % and 0.75, respectively. The biases become largest in remote areas such as the tropical Pacific where errors in the chemistry can accumulate with little balancing influence from emissions or deposition. Over polluted regions the model error is less than 10 % and has significant fidelity in following the time series of the full model. Modelled NOx shows similar features, with the most significant errors occurring in remote locations far from recent emissions. For other species such as inorganic bromine species and short-lived nitrogen species, errors become large, with NMB, RMSE and R2 reaching >2100 % >400 % and <0.1, respectively. This proof-of-concept implementation takes 1.8 times more time than the direct integration of the differential equations, but optimization and software engineering should allow substantial increases in speed. We discuss potential improvements in the implementation, some of its advantages from both a software and hardware perspective, its limitations, and its applicability to operational air quality activities.


2014 ◽  
Vol 111 (33) ◽  
pp. E3362-E3363 ◽  
Author(s):  
D. N. Reshef ◽  
Y. A. Reshef ◽  
M. Mitzenmacher ◽  
P. C. Sabeti

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