Averaging Gone Wrong: Using Time-Aware Analyses to Better Understand Behavior
March 22, 2016 ยท Declared Dead ยท ๐ The Web Conference
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Authors
Samuel Barbosa, Dan Cosley, Amit Sharma, Roberto M. Cesar-Jr
arXiv ID
1603.07025
Category
cs.SI: Social & Info Networks
Citations
29
Venue
The Web Conference
Last Checked
3 months ago
Abstract
Online communities provide a fertile ground for analyzing people's behavior and improving our understanding of social processes. Because both people and communities change over time, we argue that analyses of these communities that take time into account will lead to deeper and more accurate results. Using Reddit as an example, we study the evolution of users based on comment and submission data from 2007 to 2014. Even using one of the simplest temporal differences between users---yearly cohorts---we find wide differences in people's behavior, including comment activity, effort, and survival. Further, not accounting for time can lead us to misinterpret important phenomena. For instance, we observe that average comment length decreases over any fixed period of time, but comment length in each cohort of users steadily increases during the same period after an abrupt initial drop, an example of Simpson's Paradox. Dividing cohorts into sub-cohorts based on the survival time in the community provides further insights; in particular, longer-lived users start at a higher activity level and make more and shorter comments than those who leave earlier. These findings both give more insight into user evolution in Reddit in particular, and raise a number of interesting questions around studying online behavior going forward.
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