Explicit User Manipulation in Reinforcement Learning Based Recommender Systems

03/20/2022
by   Matthew Sparr, et al.
0

Recommender systems are highly prevalent in the modern world due to their value to both users and platforms and services that employ them. Generally, they can improve the user experience and help to increase satisfaction, but they do not come without risks. One such risk is that of their effect on users and their ability to play an active role in shaping user preferences. This risk is more significant for reinforcement learning based recommender systems. These are capable of learning for instance, how recommended content shown to a user today may tamper that user's preference for other content recommended in the future. Reinforcement learning based recommendation systems can thus implicitly learn to influence users if that means maximizing clicks, engagement, or consumption. On social news and media platforms, in particular, this type of behavior is cause for alarm. Social media undoubtedly plays a role in public opinion and has been shown to be a contributing factor to increased political polarization. Recommender systems on such platforms, therefore, have great potential to influence users in undesirable ways. However, it may also be possible for this form of manipulation to be used intentionally. With advancements in political opinion dynamics modeling and larger collections of user data, explicit user manipulation in which the beliefs and opinions of users are tailored towards a certain end emerges as a significant concern in reinforcement learning based recommender systems.

READ FULL TEXT

page 21

page 37

page 38

page 41

research
09/09/2021

User Tampering in Reinforcement Learning Recommender Systems

This paper provides the first formalisation and empirical demonstration ...
research
09/12/2018

The closed loop between opinion formation and personalised recommendations

In social media, recommender systems are responsible for directing the u...
research
03/27/2023

Can Few Lines of Code Change Society ? Beyond fack-checking and moderation : how recommender systems toxifies social networking sites

As the last few years have seen an increase in online hostility and pola...
research
05/29/2018

CoupleNet: Paying Attention to Couples with Coupled Attention for Relationship Recommendation

Dating and romantic relationships not only play a huge role in our perso...
research
04/18/2017

Understanding Negations in Information Processing: Learning from Replicating Human Behavior

Information systems experience an ever-growing volume of unstructured da...
research
02/09/2023

Auditing Recommender Systems – Putting the DSA into practice with a risk-scenario-based approach

Today's online platforms rely heavily on recommendation systems to serve...
research
10/11/2022

Understanding or Manipulation: Rethinking Online Performance Gains of Modern Recommender Systems

Recommender systems are expected to be assistants that help human users ...

Please sign up or login with your details

Forgot password? Click here to reset