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Communicating Accuracy of
Register Statistics
Thomas Laitila
Statistics Sweden and Örebro university
Presentation at Nordiskt Statistikermöte, Bergen, 2013
Outline
Why - Why measure accuracy?
Criteria - Criteria on measures of uncertainty
of register statistics
CIm - Confidence Image
Example
Discussion
Bergen, 2013 2Thomas Laitila
Why - Some basic questions
• What is statistics (statistical inference
methods) all about?
• What is making statistics so special, why is it
of value to us?
Bergen, 2013 3Thomas Laitila
Why - Chatterjee (2003)
• There are two methods for deriving
statements – deduction and induction
• Statistics is a prolongation of epistemiology
(theory on knowledge and knowledge
building)
• Statistics provide with a method for inductive
inference
Bergen, 2013 4Thomas Laitila
Why - Induction
Assumptions
Evidence
Area of concern
Statement
Bergen, 2013 5Thomas Laitila
Why - Induction, example
Ignorable nonresponse
Sample of units
Swedish labor market
Estimate of rate of
unemployment
Bergen, 2013 6Thomas Laitila
Why - Induction, another example
Register on units
Swedish labor market
Estimate of rate of
unemployment
Derived variables
Bergen, 2013 7Thomas Laitila
Why - Induction and Evidence
• All evidence come with uncertainty of the
general
• Statements derived by induction are uncertain
• Example: Inductive statement – A man will
inevitably die
– Evidence - No man born for more than e.g. 150
years ago are still alive.
Bergen, 2013 8Thomas Laitila
Why - Why is statistical inference so
special?
• Statistics is the only theory yet, providing with
objective measures of uncertainty of inductive
inference.
• Objective measures of importance for general
communication of statistics.
Bergen, 2013 9Thomas Laitila
Why - Summing up
• Register statistics yield inductive statements
• Register statistics are thereby uncertain
• Statistical inference provide with objective
measurements of uncertainty
• Inference on register statistics should be
founded in statistical inference theory
• Do we have appropriate statistical tools?
Yes, and no
Bergen, 2013 10Thomas Laitila
Criteria - Approaches for statistical
inference on register statistics
• Model based methods
– Multivariate techniques
– Data mining methods
– Stochastic processes
– and more
• Sample surveys
– Use sample surveys as a complement for
measuring uncertainty
Bergen, 2013 11Thomas Laitila
Criteria – Criteria on a measure
a) Founded within statistical inference theory
• Interpretable and objective measures
b) Easy to interpret by users
• How easy is the interpretation of an ordinary
confidence interval?
c) Of low cost
d) Comparable with measures in sample surveys
• Comparability/coherency
Bergen, 2013 12Thomas Laitila
CIm – A new statistical tool
• Statistical inference methods centers around
– a point estimator, and
– its sampling distribution
• In register statistics, treating variables as fixed,
there is
– a point estimate, but
– its sampling distribution is degenerate
• One alley of finding appropriate tools for register
statistics is to develop statistical inference
procedures which are not based on the sampling
distribution of an estimator!
Bergen, 2013 13Thomas Laitila
CIm - Laitila (2012)
• Confidence Images
• Idéa: Use external information to restrict the
potential values of study variables (y1,y2,…,yN)
– This will restrict the potential values of the population
parameter of interest t=f(y1,y2,…,yN)
– The more information, the more t is restricted.
• Information can come in any form, as long it
comes with a measure of uncertainty
• We can use registers, sample surveys, old
statistics, google, facebook, whatever!!!
Bergen, 2013 14Thomas Laitila
Example - Estimation of total number
of cattle in Swedish farms
County N:o units N:o missing values Sum of y_k
1 18713 3817 393797
2 14321 2918 296944
3 12281 2475 261832
4 10836 2213 216535
5 8646 1763 185285
6 7233 1485 148029
Total 72030 14671 1502422
Table 1: Information1 in available register on farms (N=72030)
1) No measurement or coverage errors in the register.
Problem: Estimate the total number of cattle with an interval estimate
using the information in the register, which contains missing values.
Bergen, 2013 15Thomas Laitila
Example - Pieces of information
• A1: Available data in the register
• A2: The 100 largest farms are in the register
and the N:o cattle for the 100th largest farm is
553.
• A3: Table 2 (below)
• A4: A 95% CI of the proportion of farms with
zero cattle: 0.6 – 0.71
Bergen, 2013 16Thomas Laitila
In register In population
County y_k=0 y_k>=553 y_k>=100 y_k>=100
1 9108 29 1252 1288
2 6989 17 931 959
3 5960 21 784 800
4 5329 12 677 701
5 4196 10 581 601
6 3565 11 467 477
Total 35147 100 4692 4826
Table 2: Additional information (N:o units)
Example – Table 2
Bergen, 2013 17Thomas Laitila
Example – Calculated CIms
Information
Used
Confidence
Level
Lower
bound
Upper
bound
A1 - A2 100% 1502 9615
A1 - A3 100% 1516 3016
A1 – A4 95% 1516 2217
Table 3: Confidence intervals for the total number of cattle based
on information sets A1 – A4. (Thousands cattle, True value 1,56 million)
Bergen, 2013 18Thomas Laitila
Discussion
• Image instead of interval as the method may
not provide a “connected” interval of points.
The CIm may consist of e.g. separate disjoint
intervals
• The CIm can directly be generalized to
multivariate cases.
• Easy calculated in some cases, in others
calculation can be a most complicated thing.
Research needed here.
Bergen, 2013 19Thomas Laitila
Discussion
• The CIm fulfill all the four criteria listed above.
• Most interesting:
– Traditional confidence intervals are special cases
of Cims
– Any kind of information (data) can be used, as
long as there is a probability measure of its
certainty
• The CIm is a theory, there is a need for
methodological developments.
Bergen, 2013 20Thomas Laitila
Thanks for Your attention!
Request of paper Laitila (2012)
thomas.laitila@scb.se
Bergen, 2013 Thomas Laitila 21

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Kommunikasjon: Communicating accuracy of register statistics

  • 1. Communicating Accuracy of Register Statistics Thomas Laitila Statistics Sweden and Örebro university Presentation at Nordiskt Statistikermöte, Bergen, 2013
  • 2. Outline Why - Why measure accuracy? Criteria - Criteria on measures of uncertainty of register statistics CIm - Confidence Image Example Discussion Bergen, 2013 2Thomas Laitila
  • 3. Why - Some basic questions • What is statistics (statistical inference methods) all about? • What is making statistics so special, why is it of value to us? Bergen, 2013 3Thomas Laitila
  • 4. Why - Chatterjee (2003) • There are two methods for deriving statements – deduction and induction • Statistics is a prolongation of epistemiology (theory on knowledge and knowledge building) • Statistics provide with a method for inductive inference Bergen, 2013 4Thomas Laitila
  • 5. Why - Induction Assumptions Evidence Area of concern Statement Bergen, 2013 5Thomas Laitila
  • 6. Why - Induction, example Ignorable nonresponse Sample of units Swedish labor market Estimate of rate of unemployment Bergen, 2013 6Thomas Laitila
  • 7. Why - Induction, another example Register on units Swedish labor market Estimate of rate of unemployment Derived variables Bergen, 2013 7Thomas Laitila
  • 8. Why - Induction and Evidence • All evidence come with uncertainty of the general • Statements derived by induction are uncertain • Example: Inductive statement – A man will inevitably die – Evidence - No man born for more than e.g. 150 years ago are still alive. Bergen, 2013 8Thomas Laitila
  • 9. Why - Why is statistical inference so special? • Statistics is the only theory yet, providing with objective measures of uncertainty of inductive inference. • Objective measures of importance for general communication of statistics. Bergen, 2013 9Thomas Laitila
  • 10. Why - Summing up • Register statistics yield inductive statements • Register statistics are thereby uncertain • Statistical inference provide with objective measurements of uncertainty • Inference on register statistics should be founded in statistical inference theory • Do we have appropriate statistical tools? Yes, and no Bergen, 2013 10Thomas Laitila
  • 11. Criteria - Approaches for statistical inference on register statistics • Model based methods – Multivariate techniques – Data mining methods – Stochastic processes – and more • Sample surveys – Use sample surveys as a complement for measuring uncertainty Bergen, 2013 11Thomas Laitila
  • 12. Criteria – Criteria on a measure a) Founded within statistical inference theory • Interpretable and objective measures b) Easy to interpret by users • How easy is the interpretation of an ordinary confidence interval? c) Of low cost d) Comparable with measures in sample surveys • Comparability/coherency Bergen, 2013 12Thomas Laitila
  • 13. CIm – A new statistical tool • Statistical inference methods centers around – a point estimator, and – its sampling distribution • In register statistics, treating variables as fixed, there is – a point estimate, but – its sampling distribution is degenerate • One alley of finding appropriate tools for register statistics is to develop statistical inference procedures which are not based on the sampling distribution of an estimator! Bergen, 2013 13Thomas Laitila
  • 14. CIm - Laitila (2012) • Confidence Images • Idéa: Use external information to restrict the potential values of study variables (y1,y2,…,yN) – This will restrict the potential values of the population parameter of interest t=f(y1,y2,…,yN) – The more information, the more t is restricted. • Information can come in any form, as long it comes with a measure of uncertainty • We can use registers, sample surveys, old statistics, google, facebook, whatever!!! Bergen, 2013 14Thomas Laitila
  • 15. Example - Estimation of total number of cattle in Swedish farms County N:o units N:o missing values Sum of y_k 1 18713 3817 393797 2 14321 2918 296944 3 12281 2475 261832 4 10836 2213 216535 5 8646 1763 185285 6 7233 1485 148029 Total 72030 14671 1502422 Table 1: Information1 in available register on farms (N=72030) 1) No measurement or coverage errors in the register. Problem: Estimate the total number of cattle with an interval estimate using the information in the register, which contains missing values. Bergen, 2013 15Thomas Laitila
  • 16. Example - Pieces of information • A1: Available data in the register • A2: The 100 largest farms are in the register and the N:o cattle for the 100th largest farm is 553. • A3: Table 2 (below) • A4: A 95% CI of the proportion of farms with zero cattle: 0.6 – 0.71 Bergen, 2013 16Thomas Laitila
  • 17. In register In population County y_k=0 y_k>=553 y_k>=100 y_k>=100 1 9108 29 1252 1288 2 6989 17 931 959 3 5960 21 784 800 4 5329 12 677 701 5 4196 10 581 601 6 3565 11 467 477 Total 35147 100 4692 4826 Table 2: Additional information (N:o units) Example – Table 2 Bergen, 2013 17Thomas Laitila
  • 18. Example – Calculated CIms Information Used Confidence Level Lower bound Upper bound A1 - A2 100% 1502 9615 A1 - A3 100% 1516 3016 A1 – A4 95% 1516 2217 Table 3: Confidence intervals for the total number of cattle based on information sets A1 – A4. (Thousands cattle, True value 1,56 million) Bergen, 2013 18Thomas Laitila
  • 19. Discussion • Image instead of interval as the method may not provide a “connected” interval of points. The CIm may consist of e.g. separate disjoint intervals • The CIm can directly be generalized to multivariate cases. • Easy calculated in some cases, in others calculation can be a most complicated thing. Research needed here. Bergen, 2013 19Thomas Laitila
  • 20. Discussion • The CIm fulfill all the four criteria listed above. • Most interesting: – Traditional confidence intervals are special cases of Cims – Any kind of information (data) can be used, as long as there is a probability measure of its certainty • The CIm is a theory, there is a need for methodological developments. Bergen, 2013 20Thomas Laitila
  • 21. Thanks for Your attention! Request of paper Laitila (2012) thomas.laitila@scb.se Bergen, 2013 Thomas Laitila 21