{"id":2805,"date":"2017-03-28T22:24:51","date_gmt":"2017-03-29T03:24:51","guid":{"rendered":"http:\/\/commons.trincoll.edu\/amst-data-driven\/?p=2805"},"modified":"2017-03-31T13:38:04","modified_gmt":"2017-03-31T18:38:04","slug":"4","status":"publish","type":"post","link":"http:\/\/commons.trincoll.edu\/amst-data-driven\/2017\/03\/28\/4\/","title":{"rendered":"Gephi stays #woke"},"content":{"rendered":"<p>I chose to make a subset of 3000 points of data from the time between February 13-15. Because of the size of my data sets,\u00a0I wanted to use a time frame that I haven&#8217;t analyzed yet this semester. If I run the first type of data extraction, I expect to see<\/p>\n<p>There are 544 new rows in my dataset.<\/p>\n<p><img loading=\"lazy\" class=\"alignnone size-medium wp-image-2889\" src=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-9.57.00-PM-300x273.png\" alt=\"Screen Shot 2017-03-28 at 9.57.00 PM\" width=\"300\" height=\"273\" srcset=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-9.57.00-PM-300x273.png 300w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-9.57.00-PM-768x699.png 768w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-9.57.00-PM.png 954w\" sizes=\"(max-width: 300px) 100vw, 300px\" \/><\/p>\n<p>The number of Nodes is 77, and the number of Edges is 254. Valjean has ID Number 11 and Fanzine has ID Number 23. If Valjean is the source, he is connected to Myriel, Mlle. Baptistine, Mme. Magliore, and Labarre. If Fanzine is the source, she is talking to 9 other characters, all of which are ordered by ID number.<\/p>\n<p><img loading=\"lazy\" class=\"alignnone size-medium wp-image-2891\" src=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-10.19.13-PM-300x230.png\" alt=\"Screen Shot 2017-03-28 at 10.19.13 PM\" width=\"300\" height=\"230\" srcset=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-10.19.13-PM-300x230.png 300w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-10.19.13-PM-768x590.png 768w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-10.19.13-PM-1024x786.png 1024w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-10.19.13-PM.png 1300w\" sizes=\"(max-width: 300px) 100vw, 300px\" \/><\/p>\n<p>When I increased the repulsion strength to 10000, it seemed to have spread out my nodes so I can easily pick them apart. I feel like repulsion strength increases the distance between non-linked\u00a0nodes to more easily decipher them, almost making groups of the characters who have relationships. The Average Path Length is 2.6411483253588517 and the Diameter is 5.<\/p>\n<p>When I applied Betweenness Centrality again, with a min. size of 10 and a max. size of 200. I think this made the characters\u00a0who have the most relationships\u00a0stand out, with the biggest nodes being the people with the most relationships.<\/p>\n<p><img loading=\"lazy\" class=\"alignnone wp-image-2892\" src=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-11.24.05-PM-300x300.png\" alt=\"Screen Shot 2017-03-28 at 11.24.05 PM\" width=\"377\" height=\"377\" srcset=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-11.24.05-PM-300x300.png 300w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-11.24.05-PM-150x150.png 150w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-11.24.05-PM-768x768.png 768w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-11.24.05-PM-1024x1024.png 1024w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-11.24.05-PM-380x380.png 380w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-28-at-11.24.05-PM.png 1418w\" sizes=\"(max-width: 377px) 100vw, 377px\" \/><\/p>\n<p>&nbsp;<\/p>\n<p>I chose to run a repulsion strength of 10,000. I feel that it&#8217;ll best represent my data because of the differences in tweets I received. This is better show who is actually talking to each other or about the same topic and who is not linked with anyone. My Average Path Length was 2.157, my Modularity was 0.767, and\u00a0had 825 Connected Components. In terms of modularity, I think the value 0.767 says there is a decent amount of separating and grouping that guff was able to do. 825 Connected components in a sample of 3,000 data points does seem a little low to me, but I think it makes sense with my hashtag because it&#8217;s used a lot of the time by itself and in regards to no one else.<\/p>\n<p>I feel like these recent labs have affirmed my thoughts and ideas from early on in the semester. I think I had a good understanding from the start of what kind of hashtag #woke was, and saw trends play out in the labs. I think a very critical component to #woke is the way people use it. Other social hashtags like ones in my group, #blacklivesmatter and #nodapl, are specifically about a single topic. I found it very interesting to see that #woke could be used\u00a0for a wide range of social issues, and it different types of tweets as well. Even though some tweets\u00a0that I received had nothing to do with social issues, they still provided a lot of information on the way people express themselves. To me, it seems like #woke is a\u00a0gateway for the average person to get his\/her\u00a0voice out.<\/p>\n<p><img loading=\"lazy\" class=\"alignnone  wp-image-3084\" src=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-31-at-2.32.09-PM-300x183.png\" alt=\"Screen Shot 2017-03-31 at 2.32.09 PM\" width=\"494\" height=\"301\" srcset=\"http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-31-at-2.32.09-PM-300x183.png 300w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-31-at-2.32.09-PM-768x469.png 768w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-31-at-2.32.09-PM-1024x625.png 1024w, http:\/\/commons.trincoll.edu\/amst-data-driven\/files\/2017\/03\/Screen-Shot-2017-03-31-at-2.32.09-PM.png 1762w\" sizes=\"(max-width: 494px) 100vw, 494px\" \/><\/p>\n<p>The first thing\u00a0that stands out in my graph is the massive group around @adoredelano. One of his\u00a0tweets received an incredible number of retweets, it read, &#8220;What is &#8220;#woke&#8221; about mocking mental health? Go home with all of that shit. Britney is your mother.&#8221; I really don&#8217;t understand what this tweet means, but it got an incredible amount of retweets, and stood out as the largest base of the #woke conversation. I did expect relationships like this to occur in my data; one probably semi-popular twitter account posting something that might be controversial to a lot of his\/her followers. Controversial tweets, especially one\u00a0with #woke, get the most response from followers and get the conversation started. There are 3 or 4 groups of conversations that were going on in my sample of 3,000 tweets on February 15th, and there are a lot of singletons. It makes sense that a lot of people use #woke\u00a0to express an individual opinion that doesn&#8217;t reach out to other tweeters. Then, once retweets start to happen and more people are exposed to a certain tweet, groups are formed.<\/p>\n","protected":false},"excerpt":{"rendered":"<p>I chose to make a subset of 3000 points of data from the time between February 13-15. Because of the size of my data sets,\u00a0I wanted to use a time frame that I haven&#8217;t analyzed yet this semester. If I run the first type of data extraction, I expect to see There are 544 new&#8230;<\/p>\n","protected":false},"author":1972,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":[],"categories":[1],"tags":[],"_links":{"self":[{"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/posts\/2805"}],"collection":[{"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/users\/1972"}],"replies":[{"embeddable":true,"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/comments?post=2805"}],"version-history":[{"count":7,"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/posts\/2805\/revisions"}],"predecessor-version":[{"id":2941,"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/posts\/2805\/revisions\/2941"}],"wp:attachment":[{"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/media?parent=2805"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/categories?post=2805"},{"taxonomy":"post_tag","embeddable":true,"href":"http:\/\/commons.trincoll.edu\/amst-data-driven\/wp-json\/wp\/v2\/tags?post=2805"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}