[資訊] Here's what happens when political bub已刪文

看板Eng-Class作者 (n/a)時間4年前 (2019/09/06 10:32), 編輯推噓8(808)
留言16則, 9人參與, 4年前最新討論串1/1
Social media has transformed how people talk to each other. But social media platforms are not shaping up to be the utopian spaces for human connectionheir founders hoped. Instead, the internet has introduced phenomena that can influence national elections and maybe evenhreaten democracy. Echo chambersr "bubbles"—in which people interact mainly with others who share theirolitical views—arise from the way communitiesrganize themselves online. When the organization of a social network affects political discussion on a large scale,he consequences can be enormous. In ourtudyeleased on September 4, we show that what happens at the connection points, where bubbles collide, can significantly sway political decisions toward one party or another. We call this phenomenon "information gerrymandering." When bubbles collide It's problematic when people derive all their information from inside their bubble. Even if it's factual, the information people get from their bubble may be selected to confirm theirrior assumptions. In contemporary U.S. politics, this is a likely contributor toncreasing political polarizationn the electorate. But that's not the whole story. Most people have aoot outsidef their political bubbles. They read news from a range of sources and talk to some friends with different opinions and experiences than their own. The balance between the influence coming from inside and outside a bubble matters a lot for shaping a person's views. This balance is different for different people: One person who leans Democrat may hear political arguments overwhelmingly from other Democrats, while another may hear equally from Democrats and Republicans. From the perspective of the parties who are trying to win the public debate, what's important is how their influence is spread out across the social network. What we show in our study, mathematically and empirically, is that a party's influence on a social networkan be broken up, in a way analogous to electoral gerrymandering of congressional districts. In our study, information gerrymandering was intentional: We structured our social networks to produce bias. In the real world, things are more complicated, of course. Social network structures grow out of individual behavior, and that behavior is influenced by theocial media platformsthemselves. Information gerrymandering gives one party an advantage in persuading voters. The party that has an advantage, we show, is the party that does not split up its influence and leave its members open to persuasion from the other side. This isn't just a thought experiment—it's something we have measured and tested in our research. Our colleagues at MITsked over 2,500 people, recruited from Amazon Mechanical Turk, to play a simple voting game in groups of 24. The players were assigned to one of two parties. The game was structured to reward party loyalty, but also to reward compromise: If your party won with 60% of the votes or more, each party member received US$2. If your party compromised to help the other party reach 60% of the votes, each member received 50 cents. If no party won, the game was deadlocked and no one was paid. We structured the game this way to mimic the real world tensions between voters' intrinsic party preferences and theesire to compromisen important issues. In our game, each player updated their voting intentions over time, in response to information about other people's voting intentions, which they received through their miniature social network. The players saw, in real time, how many of their connections intended to vote for their party. We placed players in different positions on the network, and we arranged their social networks to produce different types of colliding bubbles. The experimental games and networks were superficially fair. Parties had the same number of members, and each person had the same amount of influence on other people. Still, we were able to build networks that gave one party a huge advantage, so that they won close to 60% of the vote, on average. To understand the effect of the social network on voters' decisions, we counted up who is connected to whom, accounting for their party preferences. Using this measure, we were able to accurately predict both the direction of the bias arising from information gerrymandering and the proportion of the vote received by each party in our simple game. We also measured information gerrymandering in real-world social networks. We looked at published data on people'sedia consumption, comprising 27,852 news items shared by 938 Twitter users in the weeks leading up to the 2016 presidential election, as well asver 250,000 political tweetsrom 18,470 individuals in the weeks leading up to the 2010 U.S. midterm elections. We also looked at theolitical blogosphere, examining how 1,490 political blogs linked to one another in the two months preceding the 2004 U.S. presidential election. We found that these social networks have bubble structures similar to those constructed for our experiments. The effects that we saw in our experiments are similar to what happens when politicians gerrymander congressional districts. A party canraw congressional districtsthat are superficially fair—each district is contained within a single border, and contains the same number of voters—but that actually lead to systematic bias, allowing one party to win more seats than the proportion of votes they receive. Electoral gerrymandering is subtle. You often know it when you see it on a map, but a rule to determine when districts are gerrymandered is complicated to define, which was aticking pointn the recent.S. Supreme Court casen the issue. In a similar way, information gerrymandering leads to social networks that are superficially fair. Each party can have the same number of voters with the same amount of influence, but the network structure nonetheless gives an advantage to one party. Counting up who is connected to whom allowed us to develop a measure we call the "influence gap." This mathematical description of information gerrymandering predicted the voting outcomes in our experiments. We believe this measure is useful for understanding howeal-worldsocial networks are organized, and how their structure will bias decision making. Debate about howocial medialatforms are organized, as well as the consequences for individual behavior and for democracy, will continue for years to come. But we propose that thinking in terms ofetwork-level concepts like bubbles and the connections between bubbles can provide a better grasp on these problems. ----- Sent from JPTT on my Htc HTC Desire 12+. -- ※ 發信站: 批踢踢實業坊(ptt.cc), 來自: 101.9.128.198 (臺灣) ※ 文章網址: https://www.ptt.cc/bbs/Eng-Class/M.1567737136.A.8B2.html

09/06 10:53, 4年前 , 1F
一直洗版不能桶嗎==
09/06 10:53, 1F

09/06 10:53, 4年前 , 2F
這邊是不是沒有版主@@"
09/06 10:53, 2F

09/06 11:10, 4年前 , 3F
洗的太誇張了吧
09/06 11:10, 3F

09/06 13:23, 4年前 , 4F
板主已2天未上線…不能噓文真痛苦
09/06 13:23, 4F

09/06 13:34, 4年前 , 5F
我之前有寄信給版主,結果版主沒回,後來有上線但沒讀
09/06 13:34, 5F

09/06 15:53, 4年前 , 6F
狂洗欸...是要衝文章數嗎
09/06 15:53, 6F

09/06 15:59, 4年前 , 7F
是有人已經在ID_Finance檢舉洗文章,不過好像還沒處理
09/06 15:59, 7F

09/06 16:33, 4年前 , 8F
登入次數 4 千多次還狂洗文章 = =
09/06 16:33, 8F

09/06 19:48, 4年前 , 9F
他這樣洗文章已經洗了幾百了 超扯
09/06 19:48, 9F

09/07 01:22, 4年前 , 10F
真的超誇張的!!!!!
09/07 01:22, 10F

09/07 01:23, 4年前 , 11F
希望版主水桶他,最好連文章一起刪掉
09/07 01:23, 11F

09/07 01:30, 4年前 , 12F

09/07 01:31, 4年前 , 13F
剛剛發現,他還在別版自己公告自己是版主
09/07 01:31, 13F

09/07 01:31, 4年前 , 14F
現在說不定還在笑我們無法制止他==
09/07 01:31, 14F

09/07 10:31, 4年前 , 15F
板主一定是在找能一次解決的方法,大家要有信心
09/07 10:31, 15F

09/07 18:45, 4年前 , 16F
可以擺罷免版主嗎,這太誇張了
09/07 18:45, 16F
文章代碼(AID): #1TSSKmYo (Eng-Class)