Title: European Conference on Quality in Survey Statistics
1European Conference on Quality in Survey
Statistics
2Quality in Official StatisticsSome Recent and
Not so Recent Developments
- Lars Lyberg
- Statistics SwedenQ2006
3Why We Have a Q Conference
- One of the LEG recommendations
- The ESS mission, where it is stated that ESS
shall provide the EU and indeed the world, with
high quality information, available to everyone,
on various areas and levels for decision-making,
research and debate. - The ESS vision with keywords such as world
leader, scientific principles, continuous
improvement, harmonization, and basis for
democracy and progress. - Westat, Inc.
4Contents of Q so Far ( ms)
- Evaluation of data quality (92)
- Sampling and estimation (65)
- Nonresponse (44)
- Questionnaire development and testing (22)
- Confidentiality (17)
- Burden (5)
- Knowledge economy (5)
- Quality management of systems and organizations
(63) - Frameworks (11)
- Reporting (52)
- Process control (36)
- Auditing and self-assessment (11)
- Customers (36)
- Standards (11)
- Harmonization (12)
5Somewhat Neglected Topics
- Respondents
- Costs
- Trade-offs
- Standardization
- Fitness for use
- User perception of quality
- Trust
- Audits and self-assessment
- The nitty-gritty of QM
6Issue No.10The Concept of Quality
- Statistical Process Control (30s and 40s)
- Small errors indicate usefulness (Kendall,
Jessen, Palmer, Deming, Stephan, Hansen, Hurwitz,
Tepping, Mahalanobis) - Decomposition of MSE around 1960
- Data quality (Kish, Zarkovich 1965)
- Quality frameworks 70s
- CASM movement 80s
- Quality and users
- The UN Fundamental Principles
7Components of Quality
8Defining Quality
- Fitness for use or fitness for purpose
- Framework components
- Getting the job done, on time, within budget, so
that it meets the specified requirements
9Quality Assurance and Quality Control
- QA makes sure that the processes are capable of
delivering a good product - QC makes sure that the product is actually good
10Controlling Quality
Measures Indicators
Control instrument
Main stake-holders
Quality Level
Framework dimensions, error est., MSE
Product specs
User
Product
Variation via control charts, other paradata
analysis
Process variables, SPC, CBM, SOP , checklists
Survey designer
Process
Scores, Strong and weak points, Are we measuring
up?
Excellence models, CoP, Reviews, Audits,
Self-assessments
NSI, owner, society
Organization
11Issue No. 9Quality Measurement and Quality
Reporting
- Objective To ensure that users have access to
measures or indicators of quality, presented in
ways that meet their particular needs - The typical framework relevance, accuracy,
timeliness and punctuality, accessibility and
clarity, comparability, and coherence
12Examples of Reports
- Dataset-specific quality assessments for
different kinds of economic statistics (IMF) - Process data handbook (LEG/UK)
- Quality guidelines (Stats Canada, Stats Finland)
- Questions and Answers (OMB)
- National or organizational frameworks
- Quality profiles
- Guidelines for quality reporting (Stats Can,
ONS,, Stats Sweden, FCSM)
13Concerns
- The user has not been consulted
- How should dimensions be measured?
- How do we handle information gaps?
- Some quality indicators are dubious
- Dimensions are in conflict
- What happened to total survey error or total
quality? Särndal and Platek (2001) - Do we need global harmonization?
14Issue No. 8Demings 13 points
- The 13 factors that affect the usefulness of a
survey - To point out the need for directing effort toward
all of them in the planning process with a view
to usefulness and funds available - To point out the futility of concentrating on
only one or two of them - To point out the need for theories of bias and
variability that correlate accumulated experience
15The 13 Points
- Variability in Response
- Differences between Different Kinds and Degrees
of Canvass - Bias and Variation Arising from the Interviewer
- Bias of the Auspices
- Imperfections in the Design of the Questionnaire
and Tabulation Plans
1613 Points Continued
- Changes that Take Place in the Universe before
Tabulations Are Available - Bias Arising from Nonresponse
- Bias Arising from Late Reports
- Bias Arising from an Unrepresentative Selection
of Data for the Survey or of the Period Covered - Bias Arising from an Unrepresentative Selection
of Respondents
1713 Points Continued
- Sampling Errors and Biases
- Processing Errors
- Errors in Interpretation
18Issue No. 7The Race for the No.1 Spot
- Started with The Economists ranking
- There is an element of positioning in some of the
visions presented by statistical organizations
19But
- There is no justification for competition
- There is no framework, jury or reward
- Statistical organizations have the same problems
and tasks and need to collaborate - Statistical organizations should capitalize on
their strengths and develop excellence centre
networks and share knowledge
20Global Coordination
- Kotz (2005) The statistical community is
witnessing an astonishing lack of coordination
between many hundreds of statistical offices and
agencies scattered throughout the world. - ..without an overall planning, some of the
efforts of civil servants and researchers are
largely wasted. - well-planned international measures are urgent.
- new basic global definitions of basic concepts
need to be developed
21Issue No. 6Quality Management
- TQM, Business reengineering, Balanced scorecard,
business excellence models, Six Sigma - Tools and core values
- Aversion to QM acronyms
- The management principles cannot be used
uniformly across countries and companies - Operations vs research culture
- Culture eats strategy for breakfast
- We are left with a set of very useful tools and
work principles
22Examples
- The process view
- Key process variables, paradata, control charts
- Spirit of continuous improvement
- Extensive user involvement
- Adoption of the PDCA cycle
- The importance of leadership
- Organizing work, inspiration, focussing on
important issues, going for root cause,
benchmarking, developing staff competence,
evaluating approaches used, promoting good
examples, empowerment, communication
23From Good to GreatJim Collins
- Whats so special with businesses that have
- been very successful for at least 15 years?
- Level 5 leadership
- First who, then what
- Confront the brutal facts, yet never lose faith
- The hedgehog concept
- Culture of discipline
24Issue No. 5Competence
- Staff competence
- Excellent programs within the U.S. Federal System
(JPSM, USDA) - Stats Canada, INSEE, ONS, ABS
- Excellent university programs
- User competence
25Competence Issues
- Existing programs heavy on methodology
- Sampling and estimation
- Software
- Specialization
- Not much on broader aspects of quality
- Many NSIs talk about the need to skill up
- Any examples of vigorous attempts vis-a-vis the
user?
26Issue No. 4 Comparative Studies
- Comparative studies are increasingly
- important
- Short term economic indicators
- Literacy surveys
- Social surveys (EU-SILC, ESS)
- Education surveys
27Examples of challenges
- Existing systems for input and output
harmonization are not sufficient - Developing a questionnaire that works in all
countries and languages - Concepts, questions, translation, interpretation
- Extensive quality control and supervision
- Varying methodological and financial resources
- Increased distance between user and producer
28Issue No. 3The Process View
- Traditional large-scale evaluations are expensive
and results come too late - Small-scale evaluations must be conducted to get
estimates of error components (gold standard,
latent class analysis, responsive designs,
multi-level modelling) - Long-term improvements are achieved via improved
processes controlled by paradata
29Generic Control Chart
30Understanding Variation (I)
- Common cause variation
- Common causes are the process inputs and
conditions that contribute to the regular,
everyday variation in a process - Every process has common cause variation
- Example Percentage of correctly scanned data,
affected by peoples handwriting, operation of
the scanner
31Understanding Variation (II)
- Special cause variation
- Special causes are factors that are not always
present in a process but appear because of
particular circumstances - The effect can be large
- Special cause variation is not present all the
time - Example Using paper with a colour unsuitable for
scanning
32Action
- Eliminate special cause variation
- Decrease common cause variation if necessary
- Do not treat common cause as special cause
33Standards
- Purposes
- To control processes, variability and costs
- To improve comparability
- To define a minimum level of performance
- Examples
- Classification
- CBMs and checklists
- Standard Operating Procedures
- ISO
34Problems with Standards
- They must be adhered to
- They must be maintained and updated
- In stovepipe systems its easy to find excuses to
deviate - Standard, policy, guideline, best practice,
recommended practice?
35Issue No. 2The User
- In place
- The principle of openness (OMB 1978)
- Responsibility to inform users (many agencies in
the 70s) - Dissemination procedures
- Customer satisfaction and image surveys
- Councils and service level agreements
- Problems
- How should quality information be communicated?
- How do we distinguish between different kinds of
users? - How do users and producers use quality
information and metadata? - How do producers and users collaborate on fitness
for use? (ABS)
36Issue No. 1Image Is Everything
37- Eliminate special cause variation
- Decrease common cause variation if necessary
38European Conference on Quality in Survey
Statistics