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How Brazilian protesters are using Twitter How Brazilian protesters are using Twitter
(about 2 hours later)
More than a million Brazilians have joined protests in over 100 cities throughout Brazil in the past few weeks. Since their early beginning as a "Revolta do Busão" (bus rebellion) to reduce bus fares, the protests now include a much larger set of issues faced by Brazilian society. Protesters are angry about corruption and inequality. They're also frustrated about the cost of hosting the upcoming World Cup and Olympic Games in light of economic disparity and lack of high quality basic services. Yesterday, as Brazil defeated Spain to win the Confederations Cup final, police clashed with protesters near Maracana stadium for the second timein two weeks.More than a million Brazilians have joined protests in over 100 cities throughout Brazil in the past few weeks. Since their early beginning as a "Revolta do Busão" (bus rebellion) to reduce bus fares, the protests now include a much larger set of issues faced by Brazilian society. Protesters are angry about corruption and inequality. They're also frustrated about the cost of hosting the upcoming World Cup and Olympic Games in light of economic disparity and lack of high quality basic services. Yesterday, as Brazil defeated Spain to win the Confederations Cup final, police clashed with protesters near Maracana stadium for the second timein two weeks.
People turned to social media to share what they saw on the streets and invite others to join in the protests. For example, some of our most active Brazilian users of So.cl have been posting daily collages with images, links, and descriptions of the protests. According to a well-known polling company, a surprising 72% of Brazilians online supported the demonstrations, and 10% claimed to have joined the protests on the streets. For a while, leftist President Rouseff maintained a high approval rate of 55%, down from 63% the year before and still one of the highest for any leader in the world. By June 29th, however, only 30% of Brazilians considered her administration "great" or "good."People turned to social media to share what they saw on the streets and invite others to join in the protests. For example, some of our most active Brazilian users of So.cl have been posting daily collages with images, links, and descriptions of the protests. According to a well-known polling company, a surprising 72% of Brazilians online supported the demonstrations, and 10% claimed to have joined the protests on the streets. For a while, leftist President Rouseff maintained a high approval rate of 55%, down from 63% the year before and still one of the highest for any leader in the world. By June 29th, however, only 30% of Brazilians considered her administration "great" or "good."
TimelineTimeline
Although the Brazilian movement seemed to appear out of the blue the second week of June, the news about the bus fare increase first appeared in the media back in January. Furthermore, the organization behind the first protests, Movimento Passe Livre (Free Pass Movement), started 8 years ago and had organized an initial demonstration with students on May 28th in preparation for a bigger one on June 6th that attracted a few thousand people. At that point, the protest's presence on social media seemed to have been constrained to MPL's blog and the Facebook event for the demonstrations. This changed after the demonstrations were faced with police repression and several videos of people being injured by police were spread on social media. The movement started to gain a lot of attention on Twitter and Facebook and quickly spread to more Brazilian cities. See the following timeline for a longer list of events related to the protests.Although the Brazilian movement seemed to appear out of the blue the second week of June, the news about the bus fare increase first appeared in the media back in January. Furthermore, the organization behind the first protests, Movimento Passe Livre (Free Pass Movement), started 8 years ago and had organized an initial demonstration with students on May 28th in preparation for a bigger one on June 6th that attracted a few thousand people. At that point, the protest's presence on social media seemed to have been constrained to MPL's blog and the Facebook event for the demonstrations. This changed after the demonstrations were faced with police repression and several videos of people being injured by police were spread on social media. The movement started to gain a lot of attention on Twitter and Facebook and quickly spread to more Brazilian cities. See the following timeline for a longer list of events related to the protests.
Measuring Twitter activity in the Brazilian protestsMeasuring Twitter activity in the Brazilian protests
In order to better understand the development of the protests in social media, Twitter in particular, we collected the full set of 1,579,824 tweets posted between June 1st and June 22nd containing the following hashtags: #VemPraRua (Come to the streets), #MudaBrasil (Change Brazil), #ChangeBrazil, #ChangeBrasil, #passelivre (Free Pass), #protestosrj (Protests Rio de Janeiro), #ogiganteacordou (the giant awoke), #copapraquem (Cup for Whom), #PimientaVsVinagre (Pepper vs Vinager), #sp17j (Sao Paulo June 17), , #consolação, and #acordabrasil (Wake Up Brazil).In order to better understand the development of the protests in social media, Twitter in particular, we collected the full set of 1,579,824 tweets posted between June 1st and June 22nd containing the following hashtags: #VemPraRua (Come to the streets), #MudaBrasil (Change Brazil), #ChangeBrazil, #ChangeBrasil, #passelivre (Free Pass), #protestosrj (Protests Rio de Janeiro), #ogiganteacordou (the giant awoke), #copapraquem (Cup for Whom), #PimientaVsVinagre (Pepper vs Vinager), #sp17j (Sao Paulo June 17), , #consolação, and #acordabrasil (Wake Up Brazil).
Above we show the total number of tweets posted each day. We continue to analyze the data, hoping to expand beyond those hashtags, but here are three things we have found so far:Above we show the total number of tweets posted each day. We continue to analyze the data, hoping to expand beyond those hashtags, but here are three things we have found so far:
1. Protests' tweets peaked on June 17th1. Protests' tweets peaked on June 17th
The peak of 96,531 tweets/hour happened specifically around 8PM local time on June 17th, 2013. This was the day protesters swarmed the Brazilian Congress. One example of a highly retweeted message this day was one from @AnonymousBrasil reporting on the protesters' occupation of congress:The peak of 96,531 tweets/hour happened specifically around 8PM local time on June 17th, 2013. This was the day protesters swarmed the Brazilian Congress. One example of a highly retweeted message this day was one from @AnonymousBrasil reporting on the protesters' occupation of congress:
Congresso acaba de ser invadido ! #vemprarua https://t.co/vHWdNCUmsrCongresso acaba de ser invadido ! #vemprarua https://t.co/vHWdNCUmsr
In the figure above, we show the hourly rate of tweets during the period of interest. Time of day seasonality is clearly visible as well as the dramatic spike in conversation on the night of June 17th. We also look at what is being talked about on Twitter. Below are some of the most commonly used words.In the figure above, we show the hourly rate of tweets during the period of interest. Time of day seasonality is clearly visible as well as the dramatic spike in conversation on the night of June 17th. We also look at what is being talked about on Twitter. Below are some of the most commonly used words.
2. International nature of protests2. International nature of protests
Half of the tweets came from users whose time zone is set to "Brasilia" while the rest came from a wide range of other locations. The top time zones outside Brasilia were: Santiago, Greenland, Mid-Atlantic, Hawaii, Quito, Atlantic Time (Canada), Eastern Time (US & Canada), London, Pacific Time (US & Canada), Central Time (US & Canada), Istanbul and Buenos Aires.Half of the tweets came from users whose time zone is set to "Brasilia" while the rest came from a wide range of other locations. The top time zones outside Brasilia were: Santiago, Greenland, Mid-Atlantic, Hawaii, Quito, Atlantic Time (Canada), Eastern Time (US & Canada), London, Pacific Time (US & Canada), Central Time (US & Canada), Istanbul and Buenos Aires.
The relatively high proportion of users from Istanbul was particularly interesting given the similar protests going on in Turkey. The actual number of tweets from Istanbul was very small (5,582 tweets posted by 3,517 different accounts), but conversation rates follow a pattern of delay compared to the bulk of the tweets, suggesting that the tweets coming from Istanbul were posted after hearing the news of what was going on in Brasil (the tweets from Istanbul peaked at 434 tweets/hour on June 18th at 2:00 PM UTC) as seen in the figure below.The relatively high proportion of users from Istanbul was particularly interesting given the similar protests going on in Turkey. The actual number of tweets from Istanbul was very small (5,582 tweets posted by 3,517 different accounts), but conversation rates follow a pattern of delay compared to the bulk of the tweets, suggesting that the tweets coming from Istanbul were posted after hearing the news of what was going on in Brasil (the tweets from Istanbul peaked at 434 tweets/hour on June 18th at 2:00 PM UTC) as seen in the figure below.


3. Interactions network returns to its beginning3. Interactions network returns to its beginning
Perhaps the most fascinating finding is that the structure of the interaction network among the most active users—defined by the @mentions and retweets among the top 1% of users (those who posted at least 20 tweets in total)—exhibits cyclic behavior over the week. The interaction network begins very sparse on June 15th, grows to be more dense on June 17th, and maintains this increased density for a few days before returning to a density similar to its starting point on June 15th. The following plot shows how the volume of interactions among those in the 99% quantile grows and then shrinks.Perhaps the most fascinating finding is that the structure of the interaction network among the most active users—defined by the @mentions and retweets among the top 1% of users (those who posted at least 20 tweets in total)—exhibits cyclic behavior over the week. The interaction network begins very sparse on June 15th, grows to be more dense on June 17th, and maintains this increased density for a few days before returning to a density similar to its starting point on June 15th. The following plot shows how the volume of interactions among those in the 99% quantile grows and then shrinks.
Moreover, by comparing the structure of these daily interaction networks, we find that the pattern of relationships also exhibits cyclic behavior. In the second plot we show each daily snapshot of the interaction network as a point in space. The distance between points (i.e. daily interaction networks) represents the structural similarity between those networks - pairs closer in space are more similar. The plot demonstrates how the interaction network among these individuals begins in a particular configuration on June 15th/16th before changing drastically on June 17th and 18th (individuals on these days are interacting with many new contacts, with whom they did not previously communicate). By the end of the week, the network returns to a structural configuration similar to the way it began on June 15th.Moreover, by comparing the structure of these daily interaction networks, we find that the pattern of relationships also exhibits cyclic behavior. In the second plot we show each daily snapshot of the interaction network as a point in space. The distance between points (i.e. daily interaction networks) represents the structural similarity between those networks - pairs closer in space are more similar. The plot demonstrates how the interaction network among these individuals begins in a particular configuration on June 15th/16th before changing drastically on June 17th and 18th (individuals on these days are interacting with many new contacts, with whom they did not previously communicate). By the end of the week, the network returns to a structural configuration similar to the way it began on June 15th.
Future workFuture work
This initial analysis represents an quantitative analysis of the movement's communication on Twitter using a specific set of hashtags. More work needs to be done to not only expand to the list of hashtags beyond those we used but also to look into other communication channels such as Facebook and face to face interactions.This initial analysis represents an quantitative analysis of the movement's communication on Twitter using a specific set of hashtags. More work needs to be done to not only expand to the list of hashtags beyond those we used but also to look into other communication channels such as Facebook and face to face interactions.
Future questions to investigate could focus on understanding the roles of each of those channels. Beyond that, the roles and motivations of different actors including unaffiliated individuals, students, and existing political organizations such as MPL, traditional political parties, and collectives like Anonymous.Future questions to investigate could focus on understanding the roles of each of those channels. Beyond that, the roles and motivations of different actors including unaffiliated individuals, students, and existing political organizations such as MPL, traditional political parties, and collectives like Anonymous.
Thanks to J. Nathan Matias for his valuable feedback during the writing this post, and Andrew Osborne for the help with some of the visuals.Thanks to J. Nathan Matias for his valuable feedback during the writing this post, and Andrew Osborne for the help with some of the visuals.
This article first appeared on the Open Knowledge Foundation blog. This article first appeared on the FUSE Labs blog.
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