| clear all
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| set more off
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| set maxvar 10000
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| set mem 500m
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| local procdata "./proc_data/"
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| local rawdata "./raw_data/"
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| cd proc_data
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| use cons1999.dta, clear
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| forval x=2001(2)2011{
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| append using cons`x'.dta
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| }
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| sort hid year
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| xtset hid year
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| save health_costs_for_income.dta, replace
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| use for_reg.dta, clear
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| joinby hid year using health_costs_for_income.dta, unmatched(both)
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| tab _merge
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| drop if _merge!=3
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| local cpi1999 = 163.01
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| local cpi2001 = 172.19
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| local cpi2003 = 179.87
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| local cpi2005 = 188.91
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| local cpi2007 = 201.56
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| local cpi2009 = 215.25
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| local cpi2011 = 218.09
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| gen heal_cons_deflated=heal_cons
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| forval x=1999(2)2011{
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| replace heal_cons_deflated=heal_cons_deflated*(`cpi1999' / `cpi`x'') if year==`x'
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| }
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| drop if inc<0
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| drop if year>2007
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| drop if age<25 & year==1999
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| drop if age>85 & year==2007
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| bys hid: gen nyear=[_N]
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| keep if nyear==5
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| gen a2=(age^2)/10
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| tab year, gen(time_dummy)
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| replace inc=log(inc)
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| keep inc time_dummy* age a2 hid year
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| gen retired=1 if age>=65
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| replace retired=0 if retired!=1
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| reg inc age a2 time_dummy* retired
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| estimates table, keep(age a2 retired) b
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| predict inc_hat
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| gen x_tilda=inc
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| replace year=1 if year==1999
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| replace year=2 if year==2001
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| replace year=3 if year==2003
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| replace year=4 if year==2005
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| replace year=5 if year==2007
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| xtset hid year
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| bysort hid: egen mean_hid_inc=mean(inc)
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| gen dif_mean=inc-mean_hid_inc
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| sum dif_mean, d
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| gen p1=r(p1)
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| gen p99=r(p99)
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| replace x_tilda=. if dif_mean<=p1
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| replace x_tilda=. if dif_mean>=p99
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| preserve
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| gen lag1_x_tilda=L.x_tilda
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| gen lag2_x_tilda=L2.x_tilda
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| gen lag3_x_tilda=L3.x_tilda
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| gen lag4_x_tilda=L4.x_tilda
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| correlate x_tilda x_tilda, covariance
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| gen v0=r(Var_1)
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| forval x=1(1)4{
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| correlate x_tilda lag`x'_x_tilda, covariance
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| g float v`x'=r(cov_12)
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| }
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| keep v*
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| duplicates drop
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| save autocov_final_new_NO_health_ALL_v3.dta, replace
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| restore
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| gen lag1_x_tilda=L.x_tilda
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| keep x_tilda lag1_x_tilda
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| gen dif_x_tilda=x_tilda-lag1_x_tilda
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| egen SD = sd(dif_x_tilda)
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| egen KURT = kurt(dif_x_tilda)
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| egen SKEW = skew(dif_x_tilda)
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| keep SD KURT SKEW
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| duplicates drop
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| merge using autocov_final_new_NO_health_ALL_v3.dta
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| drop _merge
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| keep SD v0 v1 v2
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| replace SD = round(SD, 0.01)
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| replace v0 = round(v0, 0.01)
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| replace v1 = round(v1, 0.01)
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| replace v2 = round(v2, 0.01)
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| order v0 v1 v2 SD
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| cd ..
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| cd output
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| outsheet using tab2_income.csv, c replace
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