推荐对网络结构的影响

Jessica Su, Aneesh Sharma, Sharad Goel
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引用次数: 76

摘要

在线社交网络会定期向用户提供个性化的算法建议,告诉他们该与谁联系。在这里,我们研究了这些推荐对网络结构的总体影响,重点关注这些推荐是否增加了利基用户的受欢迎程度,或者相反,增加了那些已经受欢迎的用户的受欢迎程度。我们通过实证和理论分析Twitter在2010年年中推出“关注谁”功能前后网络结构的突然变化来调查这一问题。我们发现,所有受欢迎程度的用户都从推荐中受益;然而,最受欢迎的用户的利润远远高于平均水平。我们将这种“富者愈富”的现象归结为三个相互交织的因素。首先,作为典型的网络推荐,该系统依赖于“朋友的朋友”式算法,我们展示的结果通常是用户被推荐成比例。其次,我们发现用户的基线增长率在程度上是次线性的。因此,推荐者和自然网络动态之间的不匹配改变了网络的结构演变。最后,我们发现人们更有可能对热门用户的推荐做出积极回应——也许是因为他们的知名度更高——进一步放大了知名人士的累积优势。
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The Effect of Recommendations on Network Structure
Online social networks regularly offer users personalized, algorithmic suggestions of whom to connect to. Here we examine the aggregate effects of such recommendations on network structure, focusing on whether these recommendations increase the popularity of niche users or, conversely, those who are already popular. We investigate this issue by empirically and theoretically analyzing abrupt changes in Twitter's network structure around the mid-2010 introduction of its "Who to Follow" feature. We find that users across the popularity spectrum benefitted from the recommendations; however, the most popular users profited substantially more than average. We trace this "rich get richer" phenomenon to three intertwined factors. First, as is typical of network recommenders, the system relies on a "friend-of-friend"-style algorithm, which we show generally results in users being recommended proportional to their degree. Second, we find that the baseline growth rate of users is sublinear in degree. This mismatch between the recommender and the natural network dynamics thus alters the structural evolution of the network. Finally, we find that people are much more likely to respond positively to recommendations for popular users---perhaps because of their greater name recognition---further amplifying the cumulative advantage of well-known individuals.
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