-
Updated
Aug 26, 2019 - HTML
elbow-plot
Here are 41 public repositories matching this topic...
The project involves performing clustering analysis (K-Means, Hierarchical clustering, visualization post PCA) to segregate stocks based on similar characteristics or with minimum correlation. Having a diversified portfolio tends to yield higher returns and face lower risk by tempering potential losses when the market is down.
-
Updated
Jan 20, 2022 - Jupyter Notebook
Machine learning utility functions and classes.
-
Updated
Jan 14, 2023 - Python
Interactive knee point detection using kneed!
-
Updated
Dec 20, 2021 - Python
📉 Clustering of HTTP responses using k-means and the elbow method
-
Updated
Jul 21, 2021 - Jupyter Notebook
Assignment-08-PCA-Data-Mining-Wine data. Perform Principal component analysis and perform clustering using first 3 principal component scores (both heirarchial and k mean clustering(scree plot or elbow curve) and obtain optimum number of clusters and check whether we have obtained same number of clusters with the original data (class column we h…
-
Updated
Jul 3, 2021 - Jupyter Notebook
Perform clustering (K means clustering) for the airlines data to obtain optimum number of clusters. Draw the inferences from the clusters obtained. Data Description: The file EastWestAirlinescontains information on passengers who belong to an airline’s frequent flier program. For each passenger the data include information on their mileage histo…
-
Updated
Feb 13, 2022 - Jupyter Notebook
Perform Principal component analysis and perform clustering using first 3 principal component scores (both heirarchial and k mean clustering(scree plot or elbow curve) and obtain optimum number of clusters and check whether we have obtained same number of clusters with the original data (class column we have ignored at the begining who shows it …
-
Updated
Jan 5, 2022 - Jupyter Notebook
Assignment-07-K-Means-Clustering-Airlines. Perform clustering (K means clustering) for the airlines data to obtain optimum number of clusters. Draw the inferences from the clusters obtained. The file EastWestAirlinescontains information on passengers who belong to an airline’s frequent flier program. For each passenger the data include informati…
-
Updated
Jun 26, 2021 - Jupyter Notebook
Source code for examples of k-means and hierarchical clustering
-
Updated
Jun 18, 2019 - Jupyter Notebook
This project demonstrates a Clustering Model using Python. An international humanitarian NGO that is committed to fighting poverty and providing the people of backward countries with basic amenities and relief during the time of disasters and natural calamities. It has been able to raise around $ 10 million. The model is needed to help decide ho…
-
Updated
Feb 14, 2021 - Jupyter Notebook
K-means Clustering algorithm is used to classify,experimenting with different values of K to find the elbow point in the plot error vs K
-
Updated
Nov 2, 2019 - Python
Unsupervised-ML---K-Means-Clustering-Non-Hierarchical-Clustering-Univ. Use Elbow Graph to find optimum number of clusters (K value) from K values range. The K-means algorithm aims to choose centroids that minimise the inertia, or within-cluster sum-of-squares criterion WCSS. Plot K values range vs WCSS to get Elbow graph for choosing K (no. of c…
-
Updated
Jun 27, 2021 - Jupyter Notebook
Segmenting customers of an audiobook platform and predicting their future purchase.
-
Updated
Jan 28, 2022 - Jupyter Notebook
Used Unsupervised Machine Learning to create an analysis of cryptocurrencies on the trading market and how they could be grouped to create a classification system.
-
Updated
Nov 16, 2021 - Jupyter Notebook
The objective of this project is to analyze the customers of a bank, categorize them with K-Means and Hierarchical Clustering and evaluate their distinct characteristics
-
Updated
Jun 11, 2023 - Jupyter Notebook
This repository contains clustering techniques applied to minute weather data. It contains K-Means, Heirarchical Agglomerative clustering. I have applied various feature scaling techniques and explored the best one for our dataset
-
Updated
Jul 2, 2022 - Jupyter Notebook
Credit engine majorly based on Unsupervised learning
-
Updated
Jun 3, 2021 - Jupyter Notebook
Perform Principal component analysis and perform clustering using first 3 principal component scores (both heirarchial and k mean clustering(scree plot or elbow curve) and obtain optimum number of clusters and check whether we have obtained same number of clusters with the original data (class column we have ignored at the beginning who shows it…
-
Updated
Nov 2, 2021 - Jupyter Notebook
Practice Code (R Codes)
-
Updated
May 21, 2018 - R
Improve this page
Add a description, image, and links to the elbow-plot topic page so that developers can more easily learn about it.
Add this topic to your repo
To associate your repository with the elbow-plot topic, visit your repo's landing page and select "manage topics."