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How the Zika connects Puerto Rico

Given the importance of the recent Zika outbreak, I decided to perform some analysis on how the virus is spreading. I found very good data about Puerto Rico, so decided to focus there. With data from each municipality in Puerto Rico, it is possible to find a connectivity map of the island according to how the virus spreads there. By analyzing the growth of cases over time in each municipality treat them as independent series and performing correlation analysis, we have that the most relevant connectivity groups are given by the following graph. There are 5 clear connectivity groups based on their response to the virus, Group 1 Group 2 Group 3 Group 4 Group 5 And the strongest connectivity is given by the following graph, This connectivity is given by an adjacency matrix obtained by calculating the r² coefficients among the municipalities. In this graphs are displayed only the strongest r² coefficients. 

The NBA champions and the Stock Market

Analyzing statistics in modern day sports is one of the prime sport-fan pastimes. However it is possible to capture more information than just a plain statistical description of the data. For example, it is possible to use financial models and techniques to understand performance in sports in a more insightful way. In  particular, in the case of the recent NBA finals, we can analyze the performance of each player as if it were a financial asset.  A financial asset or security is anything that has the potential of giving a financial return overtime, such as stocks, bonds, treasury bills, and others. In this way, our goal is to analyze and asses a player's performance, and identify how reliable and efficient he is. In the case of the 2016 NBA Champions, the Cleveland Cavaliers, we can perform this analysis by studying the player's individual performance compared to that of their conference during the 2016 season. Here we can determine how sensitive a player is wi