Network Analysis of 10 years Trade Data for top producers of Copper, Lithium, and Graphite
Network Analysis of 10 years Trade Data for top producers of Copper, Lithium, and Graphite
Network Analysis of 10 years Trade Data for top producers of Copper, Lithium, and Graphite
Network Analysis of 10 years Trade Data for top producers of Copper, Lithium, and Graphite
Detecting Communities in out Football Transfer Network
assignment for political and social network analysis
Catching Up in Networks Using the Harry Potter Network Dataset
Network Statistics (Marriages between characters in the Game of Thrones Novels).
A closer look into the S&P 500 stocks
A closer look into the S&P 500 stock network properties.
Gene to Gene Network Analysis (bird's eye view)
In this blog, We'll be referring to soccer as football -- since it's played with a foot.
Network Degree of Football Networks
Exploring a network of football teams and the transactions they made from 2018-2021. An Edgelist maybe?
Who are the key actors in the football network? What makes them the key actors
In this blog, We'll be referring to soccer as football -- since it's played with a foot.
Using Univariate Conditional Uniform Graph Tests
Assignment 7 for DACSS 697E course 'Social and Political Network Analysis': "Networks: Community"
Assignment 6 for DACSS 697E course 'Social and Political Network Analysis': "Network Roles"
Assignment 5 for DACSS 697E course 'Social and Political Network Analysis': "Brokerage and Betweenness"
Assignment 4 for DACSS 697E course 'Social and Political Network Analysis': "Status & Eigenvector Centrality"
Assignment 3 for DACSS 697E course 'Social and Political Network Analysis': "Grateful Research: Creating a Network"
"After the feedback about this homework, I hopefully fixed my dataset. A tie now consists of a Justice and the school they attened and every school they have hired a clerk from. This solved my issue from before where there was limited connections. My results were chaotic involving the entire history of Justices. I decided to focus on the current Justices on the Supreme Court. Further, I thought it would be interesting to split up and compare networks of conservative and liberal Justices(based on the party of the appointing president). The Democrat Appointed Justices Network has 27 nodes, is directed, and has 243 total edges. The REpublican Appointed Justices Network has 35 nodes, is directed, and has 334 total edges."
Week 9 Assignment: Network Statistics.
A short description of the post.
"After the feedback about this homework, I hopefully fixed my dataset. A tie now consists of a Justice and the school they attened and every school they have hired a clerk from. This solved my issue from before where there was limited connections. My results were chaotic involving the entire history of Justices. I decided to focus on the current Justices on the Supreme Court. Further, I thought it would be interesting to split up and compare networks of conservative and liberal Justices(based on the party of the appointing president). The Democrat Appointed Justices Network has 27 nodes, is directed, and has 243 total edges. The REpublican Appointed Justices Network has 35 nodes, is directed, and has 334 total edges."
"After the feedback about this homework, I hopefully fixed my dataset. A tie now consists of a Justice and the school they attened and every school they have hired a clerk from. This solved my issue from before where there was limited connections. My results were chaotic involving the entire history of Justices. I decided to focus on the current Justices on the Supreme Court. Further, I thought it would be interesting to split up and compare networks of conservative and liberal Justices(based on the party of the appointing president)."
Community Detection (Marriages between characters in the Game of Thrones Novels)
Roles and Blockmodels (Marriages between characters in the Game of Thrones Novels)
A comparison of community clusters in the IACtHR network using different algorithms
"After struggling most weeks trying to work with my dataset, I realized from our classes that I was looking at my dataset the wrong way. So, I decided to flip the format. I am now looking at just how elite the Supreme Court has been over its history. I do this by grouping Justices to the school they attended. It was such a relief to be able to run the different network commands and actually get graphs or data. I will save working on formating the graphs for the future when my brain recovers. The new version of my dataset has 104 vertices. It is a directed network. It is not bipartite and there are a total of 76 edges. This was my record for going the longest in R without running into a wall. I feel a lot more comfortable with R and using network analysis in R ,but I still have a lot of work to do when it comes to understanding the results."
Roles & Communities.
assignment for political and social network analysis
This post is an analysis of community structure and machine learning techniques on my medieval dataset.
In this post I begin my analysis of the 20th century conflicts dataset.
assignment for political and social network analysis
"After struggling most weeks trying to work with my dataset, I realized from our classes that I was looking at my dataset the wrong way. So, I decided to flip the format. I am now looking at just how elite the Supreme Court has been over its history. I do this by grouping Justices to the school they attended. It was such a relief to be able to run the different network commands and actually get graphs or data. I will save working on formating the graphs for the future when my brain recovers. The new version of my dataset has 104 vertices. It is a directed network. It is not bipartite and there are a total of 76 edges."
Roles & blockmodels.
A short description of the post.
"My dataset includes every Supreme Court Justice and the school that their clerks attended. There are 187 vertices which contstitute the Justices and the different universiteis. There are 2487 edges and an edge means there is a connection between a Justice and a school because they have hired a clerk that graduated with their law degree from the university. I tried to calculate brokerage, but it says that my data is not proper and I get an error message. I am not sure if that it user error(most likely) or if I am just mixing the steps up. I was able to calcuate betweeness centrality, but I could not get dplyr to let me slice or arrange the data so I could tell which nodes were the highest. I will work further to make progress on working with the data."
Brokerage, betweenness, and other centrality measures
Structural Holes author: - name: Walid Medani url: https://walidmedani.github.io/networks-blog/
Week 5 Assignment: Brokerage and Power.
Analyzing the Enron Emails dataset from the network package
Homework 2: Brief Analysis of the Florentine Family Set
A short description of the post.
A Brief Analysis of Networks of Medieval Conflict.
Gene to Gene Network Analysis (bird's eye view)
use `igraph` and `statnet` tools to describe aspects of network structure introduced in the Week 2 Lecture: Dyads and Dyad Census, Triads and Triad Census, Network Transitivity and Clustering, Path Length & Geodesic
'My dataset includes every Supreme Court Justice and the school that their clerks attended. There are 187 vertices which contstitute the Justices and the different universiteis. There are 2487 edges and an edge means there is a connection between a Justice and a school because they have hired a clerk that graduated with their law degree from the university.The network density of the dataset is .149 not including loops. When looking at node degreee, you will see that Harvard has the highest count of relationships with 681, Yale is second wiht 464, and Chicago is third with 172.The median node degree is 3 and The mean is 27.33. While the max is 681. The centralziation score for both in and out degrees is 3.65. The nodes with the most outdegree are Harvard, Yale, Chicago, Standford, and Columbia. The nodes with the least outdegree are Penn, Northeastern, Virginia, Temple, Washington & Lee.'
My dataset includes every Supreme Court Justice and the school that their clerks attended. There are 187 vertices which contstitute the Justices and the different universiteis. There are 2487 edges and an edge means there is a connection between a Justice and a school because they have hired a clerk that graduated with their law degree from the university. The centralization score for the dataset is .952. The more modern Justices have a higher betweenness score and I believe that is attributed to the fact that the total number of clerks have significantly grown starting back in the 1950s. The schools with the highest scores are Harvard, Georgetown, GW all schools where there have been many clerks hired from. While the schools with a few or only one clerk hired from have much lower scores. When it comes to eigenvector centarlity, shows some intersting reults. A modern justice such as Justice Gorsuch has among the highest while Justice Scalia is more middle of the pack. Howver, an older justice, Justice William Howard Taft has just as high of a score as Justice Gorsuch. I am not really sure what these results man. Justice Gorsuch's high score might be explained because he both clerked for a Justice and is a Justice himself. The school with the highest bonachi-power is Minnesota with -3.63 whil the lowest is Notre Dame. The Justice with the highest score is interestingly the newest Justice, Amy Coney-Barrett.
A new article created using the Distill format.
Describing Network Data
An exploration of the Sampson's Monks dataset.
An exploration of centrality and centralization in the Florentine Families dataset
A closer look at Enrons Emails
A new article created using the Distill format.
From raw data to network data
A look at the status measures of the network
Network of militarized interstate disputes from 1870 to 2014. (https://correlatesofwar.org/data-sets/MIDs)
Degree and Centrality. (https://correlatesofwar.org/data-sets/MIDs)
Status and Eigenvector (https://correlatesofwar.org/data-sets/MIDs)
Week 3 Assignment: Degree and Centrality.
Week 4 Assignment: Network Status.
Welcome to DACSS 601: Foundations of Data Science. We hope you enjoy reading what we have to say!
Text and figures are licensed under Creative Commons Attribution CC BY-NC 4.0. The figures that have been reused from other sources don't fall under this license and can be recognized by a note in their caption: "Figure from ...".