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Privacy Statistics and
Data Linkage
Mark Elliot
Confidentiality and Privacy Group
University of Manchester
Overview
• The disclosure risk problem
• Some e-science possibilities
– Monitored data access
– Grid based Data environment Analysis
• The meaning of privacy
Data Data Everywhere…
• Massive and exponential increase in data; Mackey
and Purdam(2002); Purdam and Elliot(2002).
– These studies have led to the setting up of the data monitoring service.
• Singer(1999) noted three behavioural tendencies:
– Collect more information on each population unit
– Replace aggregate data with person specific databases
– Given the opportunity collect personal information
• Purdam and Elliot add:
– Link data whenever you can
Disclosure Risk I:
Microdata
The Disclosure Risk Problem:
Type I: Identification
Identification file
Name Address Sex
Age
..
Sex
Age
..
Income
..
..
Target file
ID
variables
Key
variables
Target
variables
Disclosure Risk II:
Aggregate Tables of
Counts
The Disclosure Risk Problem:
Type II: Attribution
Incom e lev els for two occupations
High
Medium Low
T otal
Accadem ics
0
1 00
50
1 50
Lawy ers
1 00
50
5
1 55
T otal
1 00
1 50
55
305
The Disclosure Risk Problem:
Type II: Attribution
Incom e lev els for two occupations
High
Medium Low
T otal
Accadem ics
1
1 00
50
1 50
Lawy ers
1 00
50
5
1 55
T otal
1 00
1 50
55
305
The Disclosure Risk Problem:
Type II: Attribution
Incom e lev els for two occupations
High
Medium Low
T otal
Accadem ics
0
1 00
50
1 50
Lawy ers
1 00
50
5
1 55
T otal
1 00
1 50
55
305
Multiple datasets
• Disclosure Risk assessment for single
datasets is a reasonably understood
problem.
• But what happens with multiple datasets?
Data Mining and the Grid
• Traditional Data Mining examines and
identifies patterns on single (if massive)
datasets.
• But Data Mining is really a
method/approach/technology that has been
waiting for the grid to happen.
• Smith and Elliot (2005,06,07)
• Increases in data availability lead
inexorably to an increase in disclosure risk
• My ability to make linkages (disclosive or
otherwise) between datasets X and Y is
facilitated by the copresence of dataset Z.
• It’s all about information!
CLEF:
Clinical e-Science Framework
A solution involving monitored
access
CLEF Consortium
Approximately 40 Staff from
• University of Manchester
• University of Sheffield
• University College London
• University of Brighton
• Royal Marsden Hospital, London
Purpose
• To provide a system for allowing research
access to patient data, whilst maintaining
privacy.
• Patient records
– Database
• Texts such as referral letters and other
clinical texts
– Text mining system convert to microdata
CLEF one possible architecture
Firewall
Raw Data
PRE-ACCESS
DQI Monitor
PRE-ACCESS
SDRA/SDC
Treated Data
PRE-Output DQI
Monitor
PRE-OUTPUT
SDRA/SDC
Data
Intrusion
sentry
Workbench
Data Sentry: an AI system
• Monitors patterns of analytical requests
– 3 levels: users, institution, world.
– Looking for intrusive patterns.
– Numbers of requests
• Stores Analytical requests for future use.
CLEF Proposed Architecture
Firewall
Raw Data
PRE-ACCESS
DQI Monitor
PRE-ACCESS
SDRA/SDC
Treated Data
PRE-Output DQI
Monitor
PRE-OUTPUT
SDRA/SDC
Data
Intrusion
sentry
Workbench
Data Quality
• User analyses are run on both treated and
untreated data.
– Outputs are compared and assessed for
difference.
– Major research area – Knowledge Engineering
• Analyses are stored and collectively run
over pre and post SDC files for assessment
of impact.
The Grid: the context for massive
combining.
• “Integrated infrastructure for highperformance distributed computation”
Cannataro and Talia (2002)
– Grid middleware handles the technical issues
communication, security, access/authentication
etc… Cole et al (2002)
• Data grid
• Knowledge grid
Grid based Data Environment
Analysis
What’s it about?
• Disclosure risk analysis is forever
constrained by the fact that we tend to only
look at the release object.
– This is a bit like evaluating the risk of a house
being vulnerable to flooding without looking at
where it is located!
• Data Environment Analysis aims to remedy
that situation and complete change the face
of disclosure control in so doing…..
What would it involve?
•
•
•
•
Web Crawling
Data Monitoring
Synthetic Data Generation
Grid based disclosure risk analysis
Web crawling
• Untrained Screen scraping of all web sites
that collect personal data.
• Generic info gathering of web published
personal info (personal web pages, My
space etc)
Data Monitoring
• The development of sophisticated
metadatabases representing available info
fields
• Combined Database of web available data.
– Involves intelligent interpretation of web data,
record linkage and other AI crossover
techniques.
Architecture
Web
Crawler
Web
Crawler
Web
Crawler
Web
Crawler
Web
Crawler
SDRA system
Synthesiser
Data monitor
Repository: Data & Metadata
What next?
• Decide on roles.
• Identify funder.
• Develop grant application.
Synthetic Data Generation
• Uses techniques like multiple imputation to
generate artificial data from the metadata
generated by the data monitors and from
data stored and accessed through data
repositories.
Closing thoughts
A Blurring of Concepts
• The boundaries between data and processes
become less distinct.
• Cyberidenties
– I am my data?
• The distinction between informational and
physical privacy becomes less distinct.
Data Growth
• There is no reason to suppose that data
growth will not continue at the same break
neck pace
– The data environment will become increasingly
richer
• In this context the meaning of “privacy”
will undoubtedly change.
– But how?
The meaning of Privacy
• Do people care about privacy in an
orthodox, absolute sense?
– What does a blog mean?
• Private-public: Public Privacy
– Control and ownership are more important than
the absolute right to secrecy.
From Data Subjects to Data Citizens
• A data actualised individual in control and self
aware of their own data.
• What would data citizens be concerned about?
–
–
–
–
Ownership
The use/abuse of their data
Harm
Permission/Consent
• This suggests that the law should focus on data
abuse rather than privacy per se.
Summary
• Statistical Disclosure prevents a problem
for the use of data
• Multiple linkable datasets exacerbate that
problem.
• E-science provides some tools for new
modes of data access
But…..
• Assuming that the global culture continues to
feed and be fed by the information explosion:
– Our view of ourselves/our data will/must change.
– The meaning of privacy must change with it.
• The key question is what sort of society we are
constructing; the meaning of privacy will reflect
this.