Unknowable Manipulators: Social Network Curator Algorithms

01/17/2017
by   Samuel Albanie, et al.
0

For a social networking service to acquire and retain users, it must find ways to keep them engaged. By accurately gauging their preferences, it is able to serve them with the subset of available content that maximises revenue for the site. Without the constraints of an appropriate regulatory framework, we argue that a sufficiently sophisticated curator algorithm tasked with performing this process may choose to explore curation strategies that are detrimental to users. In particular, we suggest that such an algorithm is capable of learning to manipulate its users, for several qualitative reasons: 1. Access to vast quantities of user data combined with ongoing breakthroughs in the field of machine learning are leading to powerful but uninterpretable strategies for decision making at scale. 2. The availability of an effective feedback mechanism for assessing the short and long term user responses to curation strategies. 3. Techniques from reinforcement learning have allowed machines to learn automated and highly successful strategies at an abstract level, often resulting in non-intuitive yet nonetheless highly appropriate action selection. In this work, we consider the form that these strategies for user manipulation might take and scrutinise the role that regulation should play in the design of such systems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/10/2018

Redirect2Own: Protecting the Intellectual Property of User-uploaded Content through Off-site Indirect Access

Social networking services have attracted millions of users, including i...
research
12/18/2018

Reinforcement Learning for Online Information Seeking

Information seeking techniques, satisfying users' information needs by s...
research
02/03/2023

Reinforcing User Retention in a Billion Scale Short Video Recommender System

Recently, short video platforms have achieved rapid user growth by recom...
research
02/09/2023

Computers as Bad Social Actors: Dark Patterns and Anti-Patterns in Interfaces that Act Socially

The Computers Are Social Actors paradigm suggests people exhibit social/...
research
12/18/2018

Deep Reinforcement Learning for Search, Recommendation, and Online Advertising: A Survey

Search, recommendation, and advertising are the three most important inf...
research
09/18/2013

Temporal-Difference Learning to Assist Human Decision Making during the Control of an Artificial Limb

In this work we explore the use of reinforcement learning (RL) to help w...

Please sign up or login with your details

Forgot password? Click here to reset