Modeling Content Creator Incentives on Algorithm-Curated Platforms

06/27/2022
by   Jiri Hron, et al.
6

Content creators compete for user attention. Their reach crucially depends on algorithmic choices made by developers on online platforms. To maximize exposure, many creators adapt strategically, as evidenced by examples like the sprawling search engine optimization industry. This begets competition for the finite user attention pool. We formalize these dynamics in what we call an exposure game, a model of incentives induced by algorithms including modern factorization and (deep) two-tower architectures. We prove that seemingly innocuous algorithmic choices – e.g., non-negative vs. unconstrained factorization – significantly affect the existence and character of (Nash) equilibria in exposure games. We proffer use of creator behavior models like ours for an (ex-ante) pre-deployment audit. Such an audit can identify misalignment between desirable and incentivized content, and thus complement post-hoc measures like content filtering and moderation. To this end, we propose tools for numerically finding equilibria in exposure games, and illustrate results of an audit on the MovieLens and LastFM datasets. Among else, we find that the strategically produced content exhibits strong dependence between algorithmic exploration and content diversity, and between model expressivity and bias towards gender-based user and creator groups.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/15/2020

Nash equilibrium structure of Cox process Hotelling games

We study an N-player game where a pure action of each player is to selec...
research
06/05/2023

Reducing Exposure to Harmful Content via Graph Rewiring

Most media content consumed today is provided by digital platforms that ...
research
11/11/2021

ZERO Regrets Algorithm: Optimizing over Pure Nash Equilibria via Integer Programming

In Algorithmic Game Theory (AGT), designing efficient algorithms to comp...
research
06/17/2020

Regulating algorithmic filtering on social media

Through the algorithmic filtering (AF) of content, social media platform...
research
04/24/2022

Regulating Group Exposure for Item Providers in Recommendation

Engaging all content providers, including newcomers or minority demograp...
research
07/11/2021

Designing Recommender Systems to Depolarize

Polarization is implicated in the erosion of democracy and the progressi...
research
11/14/2020

Analyzing 'Near Me' Services: Potential for Exposure Bias in Location-based Retrieval

The proliferation of smartphones has led to the increased popularity of ...

Please sign up or login with your details

Forgot password? Click here to reset