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Transcript of Federica Piersimoni ISTAT - Italian National Institute of Statistics Roberto Benedetti University...
Federica PiersimoniISTAT - Italian National Institute of Statistics
Roberto BenedettiUniversity “G.d’Annunzio” of Chieti-Pescara, Italy
Giuseppe EspaUniversy of Trento, Italy
On the use of auxiliary variables in agricultural
surveys design
Contents
Actual situationProposal• Estimators• Sampling designsData descriptionSimulationAnalysis of the resultsConclusions
1999 Months 2000 Months 2001 Months1 2 … 12 1 2 … 12 1 2 … 12
1 1 12 2 2
12…n
12…n
12…n
… … ……
12…n
12…n
12…n … …
12…n
12…n
12…n
N N N
Population unitsSample units
Actual situation
Use of the
auxiliary information
ex ante ex post
Efficient and/or
optimal stratif ication setting up
Specif ication of
eff icient sample designs
Sampling w eights
calibration, post-stratif ication, etc.
in sample surveys
2001 scatter plot matrix
tc1= cattle slaughterings 2001tc2= sheep and goats slaughterings 2001tc3= pigs slaughterings 2001tc4= equines slaughterings 2001
- 6000 126000
t c1
0
1000
2000F
r
e
q
u
e
n
- 15000 375000
t c3
0
1000
2000F
r
e
q
u
e
n
0 275000t c2
0
1000
2000F
r
e
q
u
e
n
0 10800
t c4
0
1000
2000F
r
e
q
u
e
n
t c2
t
c
1
t c3
t
c
1
t c4
t
c
1
t c1
t
c
2
t c3
t
c
2
t c4
t
c
2
t c1
t
c
3
t c2
t
c
3
t c4
t
c
3
t c1
t
c
4
t c2
t
c
4
t c3
t
c
4
2000 scatter plot matrix
tc10= cattle slaughterings 2000tc20= sheep and goats slaughterings 2000tc30= pigs slaughterings 2000tc40= equines slaughterings 2000
t c20
t
c
1
0
t c30
t
c
1
0
t c40
t
c
1
0
- 7500 157500
t c10
0
1000
2000F
r
e
q
u
e
n
0 275000
t c20
0
1000
2000F
r
e
q
u
e
n
- 15000 375000t c30
0
1000
2000F
r
e
q
u
e
n
- 400 8400
t c40
0
1000
2000F
r
e
q
u
e
n
t c10
t
c
2
0
t c30
t
c
2
0
t c40
t
c
2
0
t c10
t
c
3
0
t c20
t
c
3
0
t c40
t
c
3
0
t c10
t
c
4
0
t c20
t
c
4
0
t c30
t
c
4
0
1999 scatter plot matrix
tc19= cattle slaughterings 1999tc29= sheep and goats slaughterings 1999tc39= pigs slaughterings 1999tc49= equines slaughterings 1999
t c29
t
c
1
9
t c39
t
c
1
9
t c49
t
c
1
9
0 165000
t c19
0
1000
2000F
r
e
q
u
e
n
- 15000 315000
t c29
0
1000
2000F
r
e
q
u
e
n
- 15000 345000
t c39
0
1000
2000F
r
e
q
u
e
n
- 400 8400t c49
0
1000
2000F
r
e
q
u
e
n
t c19
t
c
2
9
t c39
t
c
2
9
t c49
t
c
2
9
t c19
t
c
3
9
t c29
t
c
3
9
t c49
t
c
3
9
t c19
t
c
4
9
t c29
t
c
4
9
t c39
t
c
4
9
t c10
t
c
1
t c19
t
c
1
t c20
t
c
2
t c29
t
c
2
t c30
t
c
3
t c39
t
c
3
t c40
t
c
4
t c49
t
c
4
SCATTER PLOTS
tc1: cattle slaughterings 2001 tc2: sheep and goats slaughterings 2001 tc3: pigs slaughterings 2001 tc4: equines slaughterings 2001tc10: cattle slaughterings 2000 tc20: sheep and goats slaughterings 2000 tc30: pigs slaughterings 2000 tc40: equines slaughterings 2000
tc19: cattle slaughterings 1999 tc29: sheep and goats slaughterings 1999 tc39: pigs slaughterings 1999 tc49: equines slaughterings 1999
Year 2001
Year 2000
Year 1999
Correlation Matrix
tc1tc2tc3tc4
tc1
1.0000 0.0039 -0.0096 0.0566
tc2
0.0039 1.0000 0.0084 0.0551
tc3
-0.0096 0.0084 1.0000 -0.0045
tc4
0.0566 0.0551 -0.0045 1.0000
Correlation Matrix
tc10tc20tc30tc40
tc10
1.0000 -0.0003 -0.0111 0.0428
tc20
-0.0003 1.0000 0.0068 0.0486
tc30
-0.0111 0.0068 1.0000 -0.0077
tc40
0.0428 0.0486 -0.0077 1.0000
Correlation Matrix
tc19tc29tc39tc49
tc19
1.0000 -0.0019 -0.0098 0.0378
tc29
-0.0019 1.0000 0.0082 0.0598
tc39
-0.0098 0.0082 1.0000 -0.0053
tc49
0.0378 0.0598 -0.0053 1.0000
Sampling frame: N = 2.211 units (enterprises) and 12 variables:
number of:•cattle, •pigs, •sheep and goats, •equines slaughtered at the census surveys of 1999,
2000 e 2001.
2000 samples of size n = 200…
…using as auxiliary information the complete frame at 1999 and at 2000 to obtain estimates at 2001!
Estimates obtained through the HorvitzThompson expansion estimator and the calibration estimator (PV) by Deville and Särndal (1992):
s.to
,min
rsss
rssss
w
dwG
xtx
Distance functionVector of the totals of the auxiliary variables
Samples selection
• simple random sampling (SRS)• stratified sampling (ST)• ranked set sampling (RSS)• probability proportional to size
(PS)• balanced sampling PS + balanced sampling
SRS: direct estimate doesn’t use auxiliary information
ST: auxiliary information is
used ex ante the strata setting up;
five planned strata; multivariate allocation
model by Bethel (1989).
RSS: original formulation: • Selection SRS without reinsertion of a first
sample of n units;• Ranking in increasing order of the n units of
the sample with respect to an auxiliary variable x known for every population unit;
• The interest variable y is measured on the first unit only;
• A second SRS is drawn and ranked; • The interest variable y is measured on the
second unit only;
• ….and so on till n replications.
Ranking variable:
with k =1,…,N, i =1,4 and t=1999, 2000.
For the units k:
:k
U ik
iktik x
nx
,
,,
1k 1k
BALANCED SAMPLING and PS + BALANCED SAMPLING:
The balance constraint
has been imposed for the four variables to be estimated.
The difference between the two criteria:in the second case the constraint is imposed ex
post to PS samples
's U kkk xxw
CATTLE
SHEEP
AND
GOATS
PI GS EQUI NES
Direct ----- 40,00% 51,25% 51,65% 57,70%
2000 14,12% 25,31% 27,43% 26,45%
1999 20,31% 31,66% 26,73% 35,12%
2000 28,04% 32,76% 34,43% 33,84%
1999 26,47% 32,17% 33,92% 30,36%
2000 4,71% 9,04% 13,62% 9,77%
1999 12,95% 12,43% 14,53% 12,87%
2000 39,33% 47,91% 47,33% 51,23%
1999 38,82% 47,82% 46,12% 52,43%
2000 13,52% 21,80% 22,36% 25,68%
1999 18,18% 31,77% 22,80% 35,18%
2000 6,17% 6,38% 15,61% 3,74%
1999 7,28% 10,18% 17,20% 6,79%
2000 4,52% 5,04% 14,87% 2,57%
1999 6,04% 9,28% 16,67% 6,48%
2000 6,24% 13,48% 17,26% 15,05%
1999 23,57% 20,05% 17,46% 19,43%
2000 5,55% 5,08% 14,60% 2,50%
1999 6,37% 9,45% 16,72% 6,96%
RMSE (as % of the estimate)Aux.
var.
year
Selection
criterionEstimator
Direct
SRS
Stratifi ed
Ranked
PPS
Direct
Balanced
Bal/ PPS
Calibration
Direct
Calibration
Direct
Calibration
Direct
Calibration
CATTLE - RMSE (as % of the estimate)
0%
5%
10%
15%
20%
25%
30%
35%
40%
45%
SRS Dire
ct est.
-----
SRS Cali
bratio
n 20
00
SRS Cali
bratio
n 19
99
Stratif
ied D
irect
est.
2000
Stratif
ied D
irect
est.
1999
Stratif
ied C
alibra
tion
2000
Stratif
ied C
alibra
tion
1999
Ranke
d Dire
ct e
st. 2
000
Ranke
d Dire
ct e
st. 1
999
Ranke
d Cal
ibrat
ion
2000
Ranke
d Cal
ibrat
ion
1999
PPS Dire
ct e
st. 2
000
PPS Dire
ct e
st. 1
999
PPS Cal
ibrat
ion
2000
PPS Cal
ibrat
ion
1999
Balan
ced
Direct
est.
200
0
Balan
ced
Direct
est.
199
9
Bal/p
ps D
irect
est.
200
0
Bal/p
ps D
irect
est.
199
9
SHEEP AND GOATS - RMSE (as % of the estimate)
0%
10%
20%
30%
40%
50%
60%
SRS Dire
ct est.
-----
SRS Cali
bratio
n 20
00
SRS Cali
bratio
n 19
99
Stratif
ied D
irect
est.
2000
Stratif
ied D
irect
est.
1999
Stratif
ied C
alibra
tion
2000
Stratif
ied C
alibra
tion
1999
Ranke
d Dire
ct e
st. 2
000
Ranke
d Dire
ct e
st. 1
999
Ranke
d Cal
ibrat
ion
2000
Ranke
d Cal
ibrat
ion
1999
PPS Dire
ct e
st. 2
000
PPS Dire
ct e
st. 1
999
PPS Cal
ibrat
ion
2000
PPS Cal
ibrat
ion
1999
Balan
ced
Direct
est.
200
0
Balan
ced
Direct
est.
199
9
Bal/p
ps D
irect
est.
200
0
Bal/p
ps D
irect
est.
199
9
PIGS - RMSE (as % of the estimate)
0%
10%
20%
30%
40%
50%
60%
SRS Dire
ct est.
-----
SRS Cali
bratio
n 20
00
SRS Cali
bratio
n 19
99
Stratif
ied D
irect
est.
2000
Stratif
ied D
irect
est.
1999
Stratif
ied C
alibra
tion
2000
Stratif
ied C
alibra
tion
1999
Ranke
d Dire
ct e
st. 2
000
Ranke
d Dire
ct e
st. 1
999
Ranke
d Cal
ibrat
ion
2000
Ranke
d Cal
ibrat
ion
1999
PPS Dire
ct e
st. 2
000
PPS Dire
ct e
st. 1
999
PPS Cal
ibrat
ion
2000
PPS Cal
ibrat
ion
1999
Balan
ced
Direct
est.
200
0
Balan
ced
Direct
est.
199
9
Bal/p
ps D
irect
est.
200
0
Bal/p
ps D
irect
est.
199
9
HORSES - RMSE (as % of the estimate)
0%
10%
20%
30%
40%
50%
60%
70%
SRS Dire
ct est.
-----
SRS Cali
bratio
n 20
00
SRS Cali
bratio
n 19
99
Stratif
ied D
irect
est.
2000
Stratif
ied D
irect
est.
1999
Stratif
ied C
alibra
tion
2000
Stratif
ied C
alibra
tion
1999
Ranke
d Dire
ct e
st. 2
000
Ranke
d Dire
ct e
st. 1
999
Ranke
d Cal
ibrat
ion
2000
Ranke
d Cal
ibrat
ion
1999
PPS Dire
ct e
st. 2
000
PPS Dire
ct e
st. 1
999
PPS Cal
ibrat
ion
2000
PPS Cal
ibrat
ion
1999
Balan
ced
Direct
est.
200
0
Balan
ced
Direct
est.
199
9
Bal/p
ps D
irect
est.
200
0
Bal/p
ps D
irect
est.
199
9
Conclusions
It is better to impose the balance constraints in design phase, than in ex post (cf. RMSE SRS - RMSE BAL)
Best performances: balanced PS selections and PS with
calibration
a joint use of complex estimators together with efficient sampling designs may reduceconsiderably the variability of the estimates
but…...
PS and PS with calibration selection criteria
but…...
more efficient less robust of the others when
outliers are present
bad performance of RSS method
forced univariate use of the auxiliary information for the ranking setting up when linear independence is present
Simulated sampling distribution of the tc2 estimates in the case of ps, with calibration estimator based on auxiliary variables of 2000
TRUE VALUE
Simulated sampling distribution of the tc3 estimates in the case of ps, with calibration estimator based on auxiliary variables of 1999
TRUE VALUE
Simulated sampling distribution of the tc4 direct estimates in the case of balanced ps, based on auxiliary variables of 1999
TRUE VALUE
Simulated sampling distribution of the tc2 direct estimates in the case of balanced ps, based on auxiliary variables of 2000
TRUE VALUE
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