40 results for “topic:svm-regressor”
PySVM : A NumPy implementation of SVM based on SMO algorithm. Numpy构建SVM分类、回归与单分类,支持缓存机制与随机傅里叶特征
IoT and ML to assuage the uncertainty in city bus schedules. Track live running status and avail tentative schedule of buses. Minimal IoT setup with a central ML-driven web-backend.
The objective of this project is to study the COVID-19 outbreak using basic statistical techniques and make short term predictions using ML regression methods.
India is one of the countries with the highest air pollution country. Generally, air pollution is assessed by PM value or air quality index value. For my further analysis, I have selected PM-2.5 value to determine the air quality prediction and the India-Bangalore region. Also, the data was collected through web scraping with the help of Beautiful Soup.
A Jupyter Notebook / Google Colab based Machine Learning Notebook for training a model to predict the first inning score of an IPL match using data from matches played between 2008 to 2017.
This project aims to develop a machine learning model to predict bike-sharing demand based on various factors such as weather conditions, time of day, and historical usage patterns. The dataset used for this project consists of 8760 records and 14 attributes.
Find the best algorithm to analyze and predict the demand for cash withdrawals
Predicting Fetal Health, and Birth-Weight of fetus using Machine Learning
Repository of my master’s thesis "Development and evaluation of a model for predicting the state of health of traction batteries based on artificial neural networks"
A collection of machine learning models for predicting laptop prices
No description provided.
Machine learning models to predict a patient's diagnosis based on features selected from a dataset
Using Machine learning to predict a student final grade
Predicting diamond prices using various regression algorithms. This project involves data preprocessing, feature engineering, and model evaluation to determine the best predictor for diamond prices.
Ranking Reviews Based on their utility using Advanced NLP Techniques
Helping our cousin from La Mancha to make stimations in the sales of iberian ham the next months. Applying feature engineer we help our SVM and Random Forest models to make the best predictions we can.
Evaluate the robustness and performance between ML and DL models in predicting the CPC concentration under various image capturing devices, types of input image datasets, and lighting conditions. The findings in our current study can overcome the bottleneck by eliminating the need for laborious manual extraction processes and reducing the time and
This is my ML projects repository
Msc. Data Science Project
No description provided.
Boston house price prediction using Linear Regression.
No description provided.
Built neural networks (NNs) and Regression models for supervised learning. The NN task is formulated as multi-class classification problem for hand-written images, and the goal is to model the relationship between an image’s content and label. Also uses knowledge on Regression models to predict housing prices in Boston to develop Machine Learning skills.
This repository contains implementations of popular machine learning algorithms including Support Vector Machine (SVM), Decision Tree, and Naive Bayes. Each algorithm is implemented separately, providing clear and concise examples of their usage for classification tasks.
The findings in the present study will be a breakthrough for the estimation of CPC concentration from S. platensis solely based on the information provided in the image without the need to perform a prior extraction process and identification of CPC concentration using analytical equipment.
Predict stock Closing price for the next day
Covered Advanced Machine Learning topics like hyperparameter tuning for Machine Learning techniques, GridSearchCV, Pruning, Linear SVM Regressor, Polynomial Kernel SVM Regressor, Bayesian Network Analysis etc,.
Regression algorithms to predict the minimum temperature
Predicting sales volume for different product types using multiple regression and analyzing the impact customer reviews have on sales.
Predicted the sales price using different machine learning prediction models for Housing Prices Dataset