빅데이터 분석을 이용한 생물 데이터 분석
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Updated
Sep 13, 2020 - Python
빅데이터 분석을 이용한 생물 데이터 분석
A K Nearest Neighbors classifier developed from scratch for self-learning purposes. Accuracy is off the charts, since we have full control on the algorithm.
To check the data belongs to which class of Iris plant. (Famous data Set: 'Iris.csv')
This Repository contains cognitiveai class's all practice labs.
Detailed Data Science using Python-Jupyter Notebook ( Data Analysis using Pandas and NumPy, Visualization using plotly express, Exploratory Data Analysis, Supervised ML models: Linear Regression, KNN, Logistic Regression, Support Vector Machine, Decision Trees Ensemble Models: Voting Bootstrap/ Bagging Aggregation, Unsupervised: K-Means
Classification ML models for predicting customer outcomes (namely, whether they're likely to opt into email / catalog marketing) depending on customer demographics (age, proximity to store, gender, customer loyalty duration) as well as sales and shopping frequencies by department
Scripts for machine learning algorithms in MATLAB/Octave and python
The project discusses using machine learning to predict doctoral program admissions and compares the performance of Logistic Regression and KNN models, finding that KNN outperforms Logistic Regression.
Real-Time spontaneous abortion prediction and Health assessment of Pregnant women using Machine Learning and IoT.
DataSet builder with scraping and data warehouse analysis
Esse pequeno projeto tem como objetivo fazer testes de acurácia com rede neural com apenas um neurônio sem classificadores e com 2 (dois) classificadores, sendo eles KNN e 1R.
K-nearest neighbors (KNN) is a type of supervised learning algorithm used for both regression and classification. KNN tries to predict the correct class for the test data by calculating the distance between the test data and all the training points. Then select the K number of points which is closet to the test data.
Predicting the results of the given transactions by classification
knn implemented on a dataset from kaggle
Simple ML models to understand and practice the basic ML concepts
Data Modelling on 2018 US midterm Election Data and US Demographic Data. Creating regression, classification and clustering models.
MSDA Program Portfolio
A school machine learning project based on the Knearest neighbours model
Identifying Image Orientation using Supervised Machine Learning Models of k-Nearest Neighbors, Adaboost and Multi-Layer Feed-Forward Neural Network trained using Back-Propagation Learning Algorithm
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