29 results for “topic:gradientboostingclassifier”
Diabetes mellitus, commonly known as diabetes is a metabolic disease that causes high blood sugar. The hormone insulin moves sugar from the blood into your cells to be stored or used for energy. With diabetes, your body either doesn’t make enough insulin or can’t effectively use its insulin.
The Water Quality Checker uses machine learning to analyze water quality parameters such as pH, solids, and conductivity, to determine if water is safe to drink. By inputting the values into the form, the model can predict if the water is fit for consumption or not.
Data fetched by wafers is to be passed through the machine learning pipeline and it is to be determined whether the wafer at hand is faulty or not apparently obliterating the need and thus cost of hiring manual labour.
Predicting transaction fraud using classification problems such as Guardian Boosting as well as user interfaces using Streamlite, Accuracy: 98% AUC-ROC
ReneWind operates wind farms. Unexpected turbine failures are presenting operational and financial problems. This project uses machine learning to develop a model that accurately predict component failure, which will give the firm more control over maintenance scheduling, costs and power generation.
A research study on How do factors like alcohol consumption, age, ethnic background, and medical history affect the risk of developing Alzheimer's disease?
Assessment of body performance in the sports context
I created a Machine Learning model that can be used to predict customer churn in credit card services.
In this project, I will be analyzing 6 seasons to figure out how to succeed in Shark Tank. To find what describes a successful idea, I will be using different statistical tools to show the main characteristics of the best projects. Moreover, I will use machine learning algorithms to predict if your idea will be successful or not.
learning python day 14
Отчет по финальному проекту "Отток пользователей" специализации "Машинное обучение и анализ данных"
HR application to predict if an employee is about to quit
The goal is to find out the employees those who stay and those who leave the company in the upcoming year. Through the various process of selecting, manipulating, transforming data and build the ensemble models, we get a best accuracy for the employee turnover rate.
Prediction model for loan default assessment
This project uses supervised machine learning algorithms to build a model that predicts which IPL team has a higher probability of winning a match.
A comparative analysis of machine learning and deep learning algorithms for fraud detection, featuring XGBClassifier, CatBoostClassifier, and LGBMClassifier, as well as ANN, CNN, RNN, LSTM, and Autoencoders for performance benchmarking
Classification of retreatment for reinfection and virological failure among people treated with direct acting antiviral therapy for hepatitis C in national pharmacuetical dispensing administrative data
Sports betting is the activity of predicting sports results and placing a wager on the outcome.
Predicting passenger survival on the Titanic using an ensemble machine learning approach, achieving a Kaggle score of 0.77990. This project leverages stacking with Random Forest, Gradient Boosting, and SVM, enhanced by feature engineering and hyperparameter tuning, to model survival patterns effectively.
The online payment fraud analysis project follows several step approach from data preprocessing through model evaluation, result comparison and final model selection, using transaction patterns to identify fraud indicators including account draining, suspicious transfers, and balance inconsistencies.
Train different models to predict the conversion rate while maximizing the F1 score.
No description provided.
News type Classification Machine Learning
Health-insurance-cross-sell-prediction
Modelos de classificação de risco de crédito usando algoritmos de Métodos Ensemble
The model will detect whether you are actually the detected one or not.
Predicting Startup Success: A Gradient Boosting classifier engineered as a Tier 1 Screening Tool. Prioritizes valid failure detection over vanity metrics to help investors filter high-risk opportunities. Corrects data leakage in legacy models to achieve realistic, valid predictions (AUC 0.75) on startup success.
Employee attrition prediction is the use of machine learning algorithms to predict whether an employee will leave their current company. The model uses historical data to learn the patterns and relationships between features and the likelihood of employee attrition
No description provided.