Algorithms that favor popular items are used to help us select among many choices, from top-ranked search engine results to highly-cited scientific papers. The goal of these algorithms is to identify high-quality items such as reliable news, credible information sources, and important discoveries–in short, high-quality content should rank at the top. Prior work has shown that choosing what is popular may amplify random fluctuations and lead to sub-optimal rankings. Nonetheless, it is often assumed that recommending what is popular will help high-quality content “bubble up” in practice. Here we identify the conditions in which popularity may be a viable proxy for quality content by studying a simple model of a cultural market endowed with an...
Online marketplaces, search engines, and databases employ aggregated social information to rank thei...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Social media are massive marketplaces where ideas and news compete for our attention. Previous studi...
We propose a simple model of an idealized online cultural market in which N items, endowed with a hi...
Social influence is ubiquitous in cultural markets and plays an important role in recommendations fo...
Ranking algorithms are the information gatekeepers of the Internet era. We develop a stylized framew...
Ranking algorithms are the information gatekeepers of the Internet era. We develop a stylized framew...
Ranking algorithms are the information gatekeepers of the Internet era. We develop a stylizedframewo...
In-degree, PageRank, number of visits and other measures of Web page popularity significantly influe...
Ranking algorithms play a crucial role in online platforms ranging from search engines to recommende...
In-degree, PageRank, number of visits and other measures of Web page popularity significantly influe...
When users search online for content, they are constantly exposed to rankings. For example, web sear...
Using a psychotechnological perspective, this study discusses the current model of information ranki...
In-degree, PageRank, number of visits and other measures of Web page popularity significantly influe...
Ranking algorithms play a crucial role in online platforms ranging from search engines to recommende...
Online marketplaces, search engines, and databases employ aggregated social information to rank thei...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Social media are massive marketplaces where ideas and news compete for our attention. Previous studi...
We propose a simple model of an idealized online cultural market in which N items, endowed with a hi...
Social influence is ubiquitous in cultural markets and plays an important role in recommendations fo...
Ranking algorithms are the information gatekeepers of the Internet era. We develop a stylized framew...
Ranking algorithms are the information gatekeepers of the Internet era. We develop a stylized framew...
Ranking algorithms are the information gatekeepers of the Internet era. We develop a stylizedframewo...
In-degree, PageRank, number of visits and other measures of Web page popularity significantly influe...
Ranking algorithms play a crucial role in online platforms ranging from search engines to recommende...
In-degree, PageRank, number of visits and other measures of Web page popularity significantly influe...
When users search online for content, they are constantly exposed to rankings. For example, web sear...
Using a psychotechnological perspective, this study discusses the current model of information ranki...
In-degree, PageRank, number of visits and other measures of Web page popularity significantly influe...
Ranking algorithms play a crucial role in online platforms ranging from search engines to recommende...
Online marketplaces, search engines, and databases employ aggregated social information to rank thei...
Recommender systems learn from historical users’ feedback that is often non-uniformly distributed ac...
Social media are massive marketplaces where ideas and news compete for our attention. Previous studi...