ethics of personalized information filtering
TRANSCRIPT
Ethics of personalized information filtering
Ansgar Koene, Elvira Perez, Christopher J. Carter, Ramona Statache, Svenja Adolphs, Claire O’Malley, Tom
Rodden, and Derek McAuley
HORIZON Digital Economy Research, University of Nottingham
• Public/private data
• Privacy: expressed concerns vs. expressed behaviour
• Interim summary
• Conditions for consent
Overview
Information Overload!
Estimated data production in 2012 (www.domo.com)
Information services, e.g. internet search, news feeds etc.
• free-to-use => no competition on price• lots of results => no competition on quantity
• Competition on quality of service• Quality = relevance = appropriate filtering
Good information service = good filtering
Why personalized filtering?
John and Jane average have:2.43 children0.47 dogs & 0.46 cats0.67 houses & 0.73 cars
• John and Jane average do not exists• Results based on population averages are crude approximations
• Personalized filtering – a natural step in the evolution of information services
Personalized filter/recommender systems
• Content based – similarity to past results the user liked
• Collaborative – results that similar users liked (people with statistically similar tastes/interests)
• Community based – results that people in the same social network liked(people who are linked on a social network e.g. ‘friends’)
Concerns regarding personalization
• Social consequences: self-reinforcing information filtering – the ‘filter bubble’ effect
• Privacy: personalization involves profiling of individual behaviour/interests
• Agency: the filtering algorithm decides which segment of available information the user gets to see
• Manipulation: people’s actions/choices are depend on the information they are exposed to
User profiling involves mining of data about:
• past behaviour of the user interacting with the service
• user behaviour on other serviceso through ‘tracking cookies’o data purchasing from other services
• mapping the social network of a user and monitoring the behaviour of people within that social network
User profiling: privacy
Informed consent for profile building:
- Part of long, difficult to understand, Term & Conditions that users click ‘accept’ on, usually without reading it.
- Same consent is applied for years without explicit renewal
User profiling: (un)informed consent
The profile summarizes user behaviour patternsits purpose is to predict the interests of the user
Access to this information can facilitate:- Phishing- Social engineering for hacking
User profiling: security issues
Filter algorithms provide competitive advantage details about them are often trade-secrets
• Users don’t know how the information they are presented with was selected no real informed consent
• Service users have no ‘manual’ override for the settings of the information filtering algorithms
• It is difficult for service users to know which information they don’t know about because it was filtered
Agency: user vs. algorithm
Information filtering, or ranking, implicitly manipulates choice behaviour.
Many online information services are ‘free-to-use’, theservice is paid for by adverting revenue, not users directlyÞ Potential conflict of interest:
promote advertisement vs. match user interests
Advertising inherently tries to manipulate consumer behaviourPersonalized filtering can also be use for political spin /
propaganda etc.
Manipulation: conflict of interest
2011 FTC investigation of Goolge for search bias
EU competition regulation vs Google
Netflix prize competition de-anonymization
Evidence of public concern
Is privacy sensitive, need to know how it is handledRole for regulating authoroty, but also:Tools to probe filtering criteria -> black-box testingUser-friendly testing kit for general public -> RRI -> so people
can decide for themsleves if they are happy with a service
Manipulation: conflicts of interest
Personalized information filtering is a natural evolution in the interaction with the user
It raises issues relating to privacy and data protection. Lack of transparency -> concerns over agency & manipulation Potential for covert manipulation RRI -> researchers developing recommender algorithms have
responsibilityidentifying and studying the socio-psychological impact of personalized
filtering;helping people to understand and regulate the level of privacy intrusion they
are willing to accept for personalized information filtering;developing a methodology to probe the subjective ‘validity’ of the information
that is provided to users based on their own interests;engaging with corporate information service providers to reinforce ethical
practices.
Conclusion
Technical development of tools:Black-box testing kit for probing the characteristics of the user behavior profiles used in recommender systems.Recommendation bias detection system for identifying user behavior manipulationA two-layer recommender architecture that de-couples the delivery of non-personalized information by service
providers from a user owned/controlled system for personalized ranking of the information. Psycho-social research on the impact of personalized information filtering on:
General exploration-exploitation trade-off in action selectionAttitudes towards trust and critical evaluation of information
Cybersecurity:
Protection against mal-use of personalized recommender systems for phishing related social engineering Policy:
Development of guidelines for responsible innovation and use of recommender systems, protecting the privacy and freedom of access to information of users.
Public engagement:
Develop educational material to help people understand how recommendations they receive from search engines, and other recommender systems, are filtered so that they can better evaluate the information they receive.
Call for research programme
Data collections by service provider Filtering by user
two layer system
Acquisti et al. (2009)