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Unfollowing on twitter

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unfollowing on twitter Funda Kivran-Swaine, Priya Govindan, Mor Naaman Rutgers University | School Media Information Lab Article: The Impact of Network Structure on Breaking Ties in Online Social Networks: Unfollowing on Twitter. To Appear, CHI 2011.
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Page 1: Unfollowing on twitter

unfollowing on twitter Funda Kivran-Swaine, Priya Govindan, Mor Naaman

Rutgers University | School Media Information Lab

Article: The Impact of Network Structure on Breaking Ties in Online Social Networks: Unfollowing on Twitter. To Appear, CHI 2011.

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blue = unfollows

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big story

online social networks – large proportion of activity on the Web.

generate a better understanding of the dynamics

validate theories from social sciences in these new and important settings

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what structural properties of the social network of nodes and dyads predict the breaking of ties (unfollows) on Twitter?

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theory background

tie strength embeddedness within networks power & status

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data

user data set (911 users) from Naaman, Boase, Lai (2010); social network data from Kwak et al. (2010)

715 seed nodes

245,586 “following” connections to seed nodes

30.6% dropped between 07/2009 & 04/2010

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analysis * independent variables (computed)

seed properties follower-count, follower-to-followee ratio, network

density, reciprocity rate, follow-back rate

follower properties follower-count, follower-to-followee ratio

dyad properties reciprocity, common neighbors, common followers, common friends, right transitivity, left transitivity, mutual transitivity, prestige ratio

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e!ect of number of followers (none):

how many followers a user has, versus the tendency of people to stop following that user.

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how many “follow” relationships were terminated when connection was reciprocated, and when it wasn’t.

note: this analysis is not robust due to between-node e!ects (because we looked at followers of 715 nodes). See paper for a more robust analysis showing the (large) e!ect of reciprocity.

e!ect of reciprocity (large):

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The user’s tendency to reciprocate, versus the tendency of users to stop following them

note: this e!ect is mostly explained by the individual relationships (previous slide), but included here for dramatic purposes (steep curve!) .

e!ect of reciprocity (another view):

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e!ect of follow-back rate: what percentage of people the user follow that follow them back, versus the tendency of people to stop following the user

note: this strong e!ect suggests that “follow-back ratio” is a indeed a good measure of status on Twitter.

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the proportion of unfollows amongst pairs with 0,1,2,…,15 common neighbors

note: again, this analysis is not robust due to between-node e!ects (because we looked at followers of 715 nodes). See paper for a more robust analysis showing the e!ect of common neighbors.

e!ect of common neighbors:

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in-depth analysis

* the details you did not want to know…

* multi-level logistic regression (dyads/edges nested within seed nodes)

* three models; full one includes seed, follower, and dyadic/edge variables

* complete details: in the paper

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some results

… explaining tie-breaks

e!ect of tie strength on breaking of ties.

*** dyadic reciprocity *** network density

*** highly statistically significant

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some results

… explaining tie-breaks

e!ect of power & status on breaking of ties.

*** prestige ratio *** follow-back rate *** f’s follower-to followee ratio *** dyadic reciprocity

*** highly statistically significant

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some results

… explaining tie-breaks

e!ect of embeddedness on breaking of ties.

*** common neighbors

*** highly statistically significant

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limitations & future work

only two snapshots: add more

additional (non-structural) variables (frequency of posting?)

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for more details

http://www.ayman-naaman.net/?p=667

Funda Kivran-Swaine, Priya Govindan and Mor Naaman (2011). The Impact of Network Structure on Breaking Ties in Online Social Networks: Unfollowing on Twitter. In Proceedings, CHI 2011.

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mornaaman.com

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Rutgers SC&I

Social Media Information Lab

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