39
Remaining Weeks • Next week: Diff-n-Diff • Nov. 17: Power calculations. • Nov. 24: summary, in class presentations. • Dec. 1: Guests, more presentations.

Remaining Weeks

  • Upload
    presta

  • View
    36

  • Download
    0

Embed Size (px)

DESCRIPTION

Remaining Weeks. Next week: Diff-n-Diff Nov. 17: Power calculations. Nov. 24: summary, in class presentations. Dec. 1: Guests, more presentations. Motivation: Causality. AP Headline Today: Teen pregnancies tied to tastes for sexy TV shows. Real-World Complications. Attrition - PowerPoint PPT Presentation

Citation preview

Page 1: Remaining Weeks

Remaining Weeks

• Next week: Diff-n-Diff

• Nov. 17: Power calculations.

• Nov. 24: summary, in class presentations.

• Dec. 1: Guests, more presentations.

Page 2: Remaining Weeks

Motivation: Causality.

AP Headline Today:

Teen pregnancies tied to tastes for sexy TV shows

Page 3: Remaining Weeks

Real-World Complications

Attrition

Data Quality

Cars Stuck in the Mud, Employees Robbed

Page 4: Remaining Weeks
Page 5: Remaining Weeks
Page 6: Remaining Weeks
Page 7: Remaining Weeks

What type of day are you having?

Page 8: Remaining Weeks

Practical ProblemsLanguage

Culture

Being around the same four Westerners 24/7 without going crazy.

Solutions:

Having had a real job?

Management skills

Page 9: Remaining Weeks

Actual Organizations

• CEGA (Our Sponsor)

http://cega.berkeley.edu• Poverty Action Lab (J-PAL)

http://www.povertyactionlab.org

• Innovations for Poverty Actionhttp://www.poverty-action.org

• Blum Center for Developing Economieshttp://blumcenter.berkeley.edu

Page 10: Remaining Weeks

CEGA-related Faculty

• Alain de Janvry

• Paul J. Gertler

• David I. Levine

• Edward Miguel

• Nancy Padian

• Elisabeth Sadoulethttp://cega.berkeley.edu/template.php?page=people

Page 11: Remaining Weeks

Larger NGO-types

• The World Bank

• Center for Global Development

• International Food Policy Research Institute

many, many more

Page 12: Remaining Weeks

Human Subjects

UC Berkeley Committee for the Protection of Human Subjects

http://cphs.berkeley.edu

In-country organization as well, for example:

Kenya Medical Research Institute

http://www.kemri.org

Page 13: Remaining Weeks

Attrition

Randomized trials often require that we get data from the subjects twice--once before the experiment and once after.

What if we can’t find them afterwards?

Page 14: Remaining Weeks

Worksheet

How might you expect people we couldn’t find to differ from those we could easily find?

What could cause people to go missing?

Page 15: Remaining Weeks

Attrition

Create Lower/Upper Bound for our estimates by assuming the worst about the people we couldn’t find.

(Ummm, I can’t remember this reference. Sorry.)

In our case, we’ll just say it’s important to find as many people as possible to get good data.

Page 16: Remaining Weeks

Attrition in KLPS

Kenyan Life Panel Survey

2003-2005 follow-up to Deworming (1998-2000)

7500 of the original 30,000 were randomly selected to be surveyed.

Page 17: Remaining Weeks

Attrition in KLPS

First, go their old school and ask around.

Second, try and go find their house.

Third, travel far and wide.

Page 18: Remaining Weeks

Attrition in KLPS

Using two-part regular and intensive tracking just like in “Moving to Opportunity.”

After finding as large a portion as you can, select random sub-sample of everyone remaining.

ERR=MRR+SRR*(1-MRR)

Page 19: Remaining Weeks

Attrition in KLPS

End Results:

84% successfully contacted

83% successfully surveyed

Page 20: Remaining Weeks

Attrition in KLPS

4 different types of being “found,” by treatment and gender

QuickTime™ and a decompressor

are needed to see this picture.

Page 21: Remaining Weeks

Where’d we find them?

--19% Outside Busia--14% Outside Neighboring Areas--25% Overall (Non-Snapshot)

QuickTime™ and a decompressor

are needed to see this picture.

Page 22: Remaining Weeks

So, We Got 84%, Are We Cool?

• Is treatment correlated with attrition?

Page 23: Remaining Weeks

So, We Got 84%, Are We Cool?

• Is treatment correlated with attrition?Probably Not. We found 83.9% to 85.0% in all treatment groups.

QuickTime™ and a decompressor

are needed to see this picture.

Page 24: Remaining Weeks

Was it worth it?

• We spent a lot of money to find the emigrants. QuickTime™ and a

decompressorare needed to see this picture.

Page 25: Remaining Weeks

Did we need to bother?

• Migrants are 1.7 cm shorter than non-migrants, and an additional year of treatment increased migrant height by .4 cm and only .1 cm for the full sample.

QuickTime™ and a decompressor

are needed to see this picture.

Page 26: Remaining Weeks

The Nuts & Bolts of Building the Dataset

• Written on hard-copy of survey.

• Sub-sample checked for mistakes.

• Data-entry place double enters.

• We check for correlation of two entries.

• We re-enter 5% sample and check against their work, accept if error rate below threshold.

• That’s the “raw” data

Page 27: Remaining Weeks

The Nuts & Bolts of Building the Dataset

• Depressed grad students spend whole summers in windowless Unix lab on the 6th floor of the 2nd ugliest building on campus writing cleaning files, which checks for blanks and skip-pattern violations.

• Send the list of flagged entries to location of hard copies

• Hard-copies checked against soft-copy. Soft-copy corrected, mistake flag lowered.

• Feel free to use the data.

Page 28: Remaining Weeks

Data Quality

Fine, we correctly recorded what the respondent said, but should we really trust what they said?

That is, if you were 16 and had a miscarriage a year ago, would you really want to tell an older man that’s a stranger about it?

Page 29: Remaining Weeks

GenderQuickTime™ and a decompressor

are needed to see this picture.

Page 30: Remaining Weeks

TribeQuickTime™ and a

decompressorare needed to see this picture.

Page 31: Remaining Weeks

Do Kids Know What They’re Talking About?

• Disregard the respondent/enumerator relationship. Do the kids really know what they’re talking about?

• Depends on the question.

Page 32: Remaining Weeks

What’s Reliable?

• We sample 5% to be resurveyed, successully resurveyed about 4%. 3 months later on average.

Baseline: If we ask “what tribe are you?” It stays the same 95% of the time.

Page 33: Remaining Weeks

Pretty Decent

QuickTime™ and a decompressor

are needed to see this picture.

Page 34: Remaining Weeks

Pretty Decent

QuickTime™ and a decompressor

are needed to see this picture.

Page 35: Remaining Weeks

I Can’t Throw This Very Far.

QuickTime™ and a decompressor

are needed to see this picture.

Page 36: Remaining Weeks

I Can’t Throw This Very Far.

QuickTime™ and a decompressor

are needed to see this picture.

Page 37: Remaining Weeks

Fraction Matching

• Sub-Tribe 95%

• Age in 1998 76%

• Grade in 2002 86%

• Ever left local area 91%

• Mom/Dad Education 51-53%

Page 38: Remaining Weeks

What Determines Remembering?

• Tables 22 and 23 show what characteristics are correlated with giving the same answer about Mom/Dad’s education in both survey and re-survey.

Page 39: Remaining Weeks

Conclusion

• Field work is great; go do some.• Try and find everyone.• Especially if you’re more/less likely to find

them thanks to your intervention.• Do your Field Officers effect the answers

given?• Does the respondent really know the right

answer in the first place?