To predict sentiment (postive, neutral, negeative) of customer feedback using tweet texts of differnt airline companies and compare different models'performace on text classification.
To develop a generalized model to deal with big and imblance data prediction that suitable for real-time fraud detection at the PySpark framework
To develop a generalized model to deal with big and imblance data prediction that suitable for real-time fraud detection at the PySpark framework
The aim of this project is to distingulish if a person was infeacted with the Malaria from a microscopic image, and provide support for the lab examination results to quickly diagnosis the Malaria parasites.
To examplify the uses of ensemble models in PySpark as the ensemble models in [previous project using sklearn and keras](https://github.com/tankwin08/ensemble-models-ML-DL-) and predict if the client will subscribe (yes/no) a term deposit (variable y) using market campaign data.
To investigate the trend and pattern of time seriese data (MODIS data) using the Long Short Term Memory (LSTM) networks and quantify the uncertianty of the time series prediction of target variables.
To investigate the trend and pattern of time seriese data (MODIS data) using the Autoregressive Integrated Moving Averages (ARIMA) and Long Short Term Memory (LSTM) networks and further to check if we can use the current model to predict further values of target variables.
To retrain the pretrained model (Submatrix-wise Vector Embedding Learner (SWIVEL) using using a small collected review datasets and classify the reviews of customer feedback as either positive or negative.
To develop a robust approach to conduct classification on data (a person is wearing glasses or not) using a ensemble of models, which include machine learning models (random forest,Gradient Boosting and Extra Trees) and deep learning model (optimized NN using Bayesian optimization).
To construct the architecture of Nentural Network (NN) and conduct paramter optimization of the NN.
Developed an open source R package to the community for processing waveform lidar data and exemplify their uses.