
This means that the possible tools you can use and analyses you can perform with R are expanding constantly, making it an increasingly powerful environment for statistical analysis. Being open source, users from around the world add new functions to its repositories on a daily basis. Scientists and data analysts worldwide use it for purposes ranging from regression analysis, to natural language processing, to biological simulation, to social network analysis - the topic of this class. R is an open source programming language designed for statistical computing and visualization.

17.4 Producing a skip-gram matrix for semantic network analysis and embedding models.17.3 From counts to a document-to-term matrix.Which methods perform similarly? Do the roles that they identify look meaningful? Plot the network coloring the nodes by role.



November 8th): Networks from Culture and Culture from Networks October 25th): Groups, Communities, and Homophily October 18th): Connectivity and the Small World Problem October 11th): Centrality, Power, and Inequality October 4th): Triads, Balance and Hierarchy September 20th): Introductions and Introduction to R
