1 Things That May Affect Estimates from the American Community Survey.

Slides:



Advertisements
Similar presentations
Multiple Indicator Cluster Surveys Survey Design Workshop
Advertisements

Statistical Significance and Population Controls Presented to the New Jersey SDC Annual Network Meeting June 6, 2007 Tony Tersine, U.S. Census Bureau.
SAMPLE DESIGN: HOW MANY WILL BE IN THE SAMPLE—DESCRIPTIVE STUDIES ?
Estimation in Sampling
Confidence Intervals, Effect Size and Power
Calculating Statistical Significance and Margins of Error Using American Community Survey Data Montgomery County Census Workshop Mark Goldstein Maryland.
1 Case Study 1: How to Deal with Estimates with Low Reliability 2009 Population Association of America ACS Workshop April 29, 2009.
Technical Issues Associated with the American Community Survey Lisa Neidert NPC Poverty/American Community Survey Workshop June 22-26, 2009.
Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 7-1 Chapter 7 Confidence Interval Estimation Statistics for Managers.
Basic Business Statistics, 10e © 2006 Prentice-Hall, Inc. Chap 8-1 Chapter 8 Confidence Interval Estimation Basic Business Statistics 10 th Edition.
PSY 307 – Statistics for the Behavioral Sciences
Technical Issues Associated with the American Community Survey Lisa Neidert NPC Poverty/American Community Survey Workshop July , 2010.
8-1 Copyright ©2011 Pearson Education, Inc. publishing as Prentice Hall Chapter 8 Confidence Interval Estimation Statistics for Managers using Microsoft.
Copyright ©2011 Pearson Education 8-1 Chapter 8 Confidence Interval Estimation Statistics for Managers using Microsoft Excel 6 th Global Edition.
7-2 Estimating a Population Proportion
Copyright © 2010, 2007, 2004 Pearson Education, Inc. Lecture Slides Elementary Statistics Eleventh Edition and the Triola Statistics Series by.
BPS - 3rd Ed. Chapter 131 Confidence intervals: the basics.
Error and Sample Sizes PHC 6716 June 1, 2011 Chris McCarty.
11 American Community Survey Data Products. 2 What do I need to know before using ACS data and data products?
THE UNIVERSITY OF MISSISSIPPI The University of Mississippi Institute for Advanced Education in Geospatial Science Census to American Community Survey.
Slide Slide 1 Copyright © 2007 Pearson Education, Inc Publishing as Pearson Addison-Wesley. Lecture Slides Elementary Statistics Tenth Edition and the.
Statistics for Managers Using Microsoft Excel, 4e © 2004 Prentice-Hall, Inc. Chap 7-1 Chapter 7 Confidence Interval Estimation Statistics for Managers.
Case Study 3: Making Comparisons 2009 Population Association of America ACS Workshop April 29, 2009.
American Community Survey Presented at the Meeting of the National Neighborhood Indicators Partnership Susan Schechter May
Issues Related to Data Dissemination in Official Statistics Presented at the European Conference On Quality in Official Statistics Helsinki, Finland May.
111 American Community Survey Fundamentals 2009 Population Association of America ACS Workshop April 29, 2009.
Slide 1 Copyright © 2004 Pearson Education, Inc..
Exploring Error and the American Community Survey.
Chapter Nine Copyright © 2006 McGraw-Hill/Irwin Sampling: Theory, Designs and Issues in Marketing Research.
Basic Business Statistics, 11e © 2009 Prentice-Hall, Inc. Chap 8-1 Chapter 8 Confidence Interval Estimation Basic Business Statistics 11 th Edition.
Confidence Interval Estimation
Basic Business Statistics, 11e © 2009 Prentice-Hall, Inc. Chap 8-1 Confidence Interval Estimation.
Section Copyright © 2014, 2012, 2010 Pearson Education, Inc. Lecture Slides Elementary Statistics Twelfth Edition and the Triola Statistics Series.
Basic Business Statistics, 10e © 2006 Prentice-Hall, Inc. Chap 8-1 Chapter 8 Confidence Interval Estimation Basic Business Statistics 11 th Edition.
Population All members of a set which have a given characteristic. Population Data Data associated with a certain population. Population Parameter A measure.
Chapter 7 Estimates and Sample Sizes
Census Data for GIS and Planning Professionals GIS in Action April 15, 2014 Charles Rynerson Census State Data Center Coordinator Population Research Center.
Using the American Community Survey (ACS) Maryland Sate Data Center Affiliate Meeting April 4, 2007.
Using the ACS: Issues with studying small areas and change over time Presented to Association of Public Data Users January 20, 2011.
Statistics for Managers Using Microsoft Excel, 5e © 2008 Pearson Prentice-Hall, Inc.Chap 8-1 Statistics for Managers Using Microsoft® Excel 5th Edition.
American Community Survey Maryland State Data Center Affiliate Meeting September 16, 2010.
American Community Survey (ACS) 1 Oregon State Data Center Meeting Portland State University April 14,
Using ACS and Census 2010 in Communities and Neighborhoods: Guidelines and Tools POPULATION REFERENCE BUREAU | PRESENTATION BY MARK MATHER.
© 2011 Cengage Learning. All Rights Reserved. May not be copied, scanned, or duplicated, in whole or in part, except for use as permitted in a license.
Some ACS Data Issues and Statistical Significance (MOEs) Table Release Rules Statistical Filtering & Collapsing Disclosure Review Board Statistical Significance.
American Community Survey “It Don’t Come Easy”, Ringo Starr Jane Traynham Maryland State Data Center March 15, 2011.
1 Chapter 6 Estimates and Sample Sizes 6-1 Estimating a Population Mean: Large Samples / σ Known 6-2 Estimating a Population Mean: Small Samples / σ Unknown.
Things that May Affect the Estimates from the American Community Survey Updated February 2013.
Prepared by the North Dakota Kids Count Sept Using the American Community Survey for Children’s Research Dr. Richard Rathge Policy Analyst North.
BPS - 3rd Ed. Chapter 131 Confidence Intervals: The Basics.
10.1: Confidence Intervals Falls under the topic of “Inference.” Inference means we are attempting to answer the question, “How good is our answer?” Mathematically:
Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 1 Estimates and Sample Sizes Chapter 6 M A R I O F. T R I O L A Copyright © 1998,
Estimating a Population Mean:  Known
Chap 8-1 Chapter 8 Confidence Interval Estimation Statistics for Managers Using Microsoft Excel 7 th Edition, Global Edition Copyright ©2014 Pearson Education.
© 2008 McGraw-Hill Higher Education The Statistical Imagination Chapter 8. Parameter Estimation Using Confidence Intervals.
1 Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Example: In a recent poll, 70% of 1501 randomly selected adults said they believed.
Business Statistics: A Decision-Making Approach, 6e © 2005 Prentice-Hall, Inc. Chap 7-1 Business Statistics: A Decision-Making Approach 6 th Edition Chapter.
Iowa State University Extension and Outreach Staff Professional Development October 20, 2015 Sandra Burke, Bailey Hanson, Christopher Seeger, and Biswa.
Chapter 7 Estimates and Sample Sizes 7-1 Overview 7-2 Estimating a Population Proportion 7-3 Estimating a Population Mean: σ Known 7-4 Estimating a Population.
Ex St 801 Statistical Methods Inference about a Single Population Mean (CI)
1 Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Example: In a recent poll, 70% of 1501 randomly selected adults said they believed.
Confidence Intervals and Hypothesis Testing Mark Dancox Public Health Intelligence Course – Day 3.
Random Sampling Error and Sample Size are Related
The American Community Survey Getting Ready for a New Decade of Socio-Economic Data.
Statistics for Business and Economics 7 th Edition Chapter 7 Estimation: Single Population Copyright © 2010 Pearson Education, Inc. Publishing as Prentice.
EMPA P MGT 630.
Estimation and Confidence Intervals
CHAPTER 8 Estimating with Confidence
Introduction to Inference
Lecture Slides Elementary Statistics Twelfth Edition
Presentation transcript:

1 Things That May Affect Estimates from the American Community Survey

2 Overview Definition of sampling error Measures associated with sampling error –Standard error –Margin of error –Confidence intervals –Coefficient of variation How to use measures associated with sampling error Non-sampling error Population controls

3 Definition of Sampling Error

4 What is Sampling Error? Definition The uncertainty associated with an estimate that is based on data gathered from a sample of the population rather than the full population

5 Illustration of Sampling Error Estimate average number of children per household for a population with 3 households: Household A1 child Household B2 children Household C3 children Average based on the full population is two children per household

6 Conceptualizing Sampling Error Three different samples: 1.Households A and B (1 child, 2 children) 2.Households B and C (2 children, 3 children) 3.Households A and C (1 child, 3 children) Three different averages: children (1 + 2) / children (2 + 3) / children (1 + 3) / 2

7 Measures associated with sampling error

8 Measures Associated with Sampling Error Standard Error (SE) Margin of Error (MOE) Confidence Interval (CI) Coefficient of Variation (CV)

9 Standard Error (SE) Definition A measure of the variability of an estimate due to sampling Depends on variability in the population and sample size Foundational measure

10 Standard Error (SE) Formula SE = MOE / ACS Data for Baltimore City: 52.1% Percent of males who have never married 1.7% Margin of Error SE = 1.7% / SE = 1.033%

11 Margin of Error (MOE) Definition A measure of the precision of an estimate at a given level of confidence (90%, 95%, 99%) Confidence level of a MOE MOEs at the 90% confidence level for all published ACS estimates

12 Margin of Error (MOE) Formula MOE = +/ x SE (90% level) Values for other confidence levels 95% = % = 2.576

13 Interpreting Margin of Error Indicates that a data user can be 90 percent certain that the estimate and the population value differ by no more than the value of the MOE MOE can help data users assess the reliability of an estimate MOE can help data users avoid misinterpreting small differences between estimates as significant

14 Interpreting Margin of Error Example for Baltimore City: 52.1% Percent of males who have never married 1.7% Margin of Error –Indicates 90 percent chance that the estimate of 52.1% and the population value differ by no more than 1.7% –Size of MOE relative to size of estimate

15 Confidence Interval Definition A range that is expected to contain the population value of the characteristic with a known probability.

16 Formula where L CL is the lower bound at the desired confidence level U CL is the upper bound at the desired confidence level is the ACS estimate and is the margin of error at the desired confidence level Confidence Interval

17 Confidence Interval Calculation Example for Baltimore City 52.1% – 1.7% = 50.4% 52.1% + 1.7% = 53.8% Confidence Interval = 50.4% to 53.8%

18 Confidence Interval Interpretation We can be 90 percent certain that the confidence interval from 50.4% to 53.8% contains the population value of never married males 15 years and older in Baltimore City Useful to display confidence intervals

19 Displaying Confidence Intervals

20 Coefficient of Variation (CV) Definition The relative amount of sampling error associated with a sample estimate Formula CV = SE / Estimate * 100%

21 Coefficient of Variation (CV) Example for Baltimore City Estimate = 52.1% of never married males Standard Error = 1.033% CV = SE / Estimate * 100% CV = 1.033% / 52.1% * 100% CV = 1.98%

22 Interpreting Coefficients of Variation Size of the CV In Baltimore City example, the CV is small (< 2%) indicating this is a reliable estimate No hard-and-fast rules about the size of CVs Caution for proportions close to zero

23 Sampling Error is Related to Sample Size The larger the sample size, the smaller the uncertainty or sampling error Combining ACS data from multiple years increases sample size and reduces sampling error All sample surveys have sampling error – including decennial census long-form data

24 How to use measures associated with sampling error

25 How are Measures of Sampling Error Used? To indicate the statistical reliability and usability of estimates To make comparisons between estimates To conduct tests of statistical significance To help users draw appropriate conclusions about data

26 Case Study Tracking Economic Well-Being in Washington, DC In 2005, city implements a series of job training initiatives to increase employment and reduce poverty rates In 2008, public officials want to assess changes in poverty rates in the city

27 Finding the Data Washington, DC has a population size greater than 65,000 Comparable data for both 2006 and 2007 are available from the ACS Examine change in the percent of people living in poverty from 2006 to 2007

28 Finding the Data 2006 ACS data for Washington, DC 19.6% % of all people living in poverty 1.4% Margin of error 2007 ACS data for Washington, DC 16.4% % of all people living in poverty 1.4% Margin of error

29 Are the Estimates Reliable and Usable? Check CVs for each estimate 2006: SE = 0.85% = (1.4% / 1.645) CV = 4.3% = (0.85% / 19.6%) * : SE = 0.85% = (1.4% / 1.645) CV = 5.2% = (0.85 %/ 16.4%) * 100 Result = Both estimates are reliable

30 Comparing the Estimates Compare Confidence Intervals: 2006: 18.2% % (19.6 +/- 1.4) 2007: 15.0% % (16.4 +/- 1.4) - Is there a significant difference?

31 Test of Statistical Significance Definition A test to determine if it is unlikely that something has occurred by chance A “statistically significant difference” means there is statistical evidence that there is a difference

32 Conducting Tests of Statistical Significance Formula where is the critical value for the desired confidence level for 90% confidence level = 1.645

33 Testing for Statistical Significance Substituting the appropriate values: –2.662  –Difference is statistically significant at the 90% confidence level

34 Drawing Appropriate Conclusions Short-term fluctuations versus real trends Increasing confidence level to 95% or 99% – for 95% confidence level = – for 99% confidence level = 2.576

35 Non-sampling error

36 What is Non-Sampling Error? Definition Any error affecting a survey or census estimate apart from sampling error Occurs in complete censuses as well as in sample surveys

37 Types of Non-Sampling Error Non-Response Error Response Error Processing Error Coverage Error

38 Population controls

39 Population Controls Independent information used to increase the precision of the ACS estimates Reduces sampling and non-sampling errors in the ACS estimates Time series of population estimates are revised annually but the ACS estimates for previous years are not.

40 Summary

41 What Have We Learned? All surveys have sampling and non-sampling error Four key measures of sampling error are standard error, margin of error, confidence interval, and coefficient of variation Measures of sampling error provide important information about the reliability of ACS estimates

42 What Have We Learned? Sampling error measures can be used to make comparisons between estimates and to conduct tests of statistical significance Understanding and using measures of sampling error helps users draw appropriate conclusions about ACS data

43 For more information Subscribe to “ACS Alert” Visit the ACS/PRCS website: Contact by telephone: Contact by