# START # Data with one region only ----------------------------------------------- # example data: set.seed(123) dt <- rdata(R=1, B=1, N=4) expect_equal( dt[, gkhamis(p=price, q=quantity, r=region, n=product)], c("1"=1) ) expect_equal( dt[, gkhamis(p=price, q=quantity, r=region, n=product, settings=list(solve="matrix"))], c("1"=1) ) expect_equal( dt[, ikle(p=price, q=quantity, r=region, n=product)], c("1"=1) ) expect_equal( dt[, ikle(p=price, r=region, n=product)], c("1"=1) ) # Data with one product only ---------------------------------------------- # example data: set.seed(123) dt <- rdata(R=4, B=1, N=1) expect_no_error( dt[, gkhamis(p=price, q=quantity, r=region, n=product)] ) expect_no_error( dt[, gkhamis(p=price, q=quantity, r=region, n=product, settings=list(solve="matrix"))] ) expect_equal( dt[, gkhamis(p=price, q=quantity, r=region, n=product)], dt[, gkhamis(p=price, q=quantity, r=region, n=product, settings=list(solve="matrix"))] ) expect_no_error( dt[, rao(p=price, q=quantity, r=region, n=product)] ) # Data with gaps ---------------------------------------------------------- # example data: set.seed(123) dt <- rdata(R=3, B=1, N=4, gaps=0.2) # gkhamis(): gk.est <- dt[, gkhamis(p=price, q=quantity, r=region, n=product, base=NULL)] gk.est1 <- dt[, gkhamis(p=price, q=quantity, r=region, n=product, base="1")] gk.est2 <- dt[, gkhamis(p=price, q=quantity, r=region, n=product, base="2")] gk.est3 <- dt[, gkhamis(p=price, q=quantity, r=region, n=product, simplify=FALSE)] gk.est4 <- dt[, gkhamis(p=price, q=quantity, r=region, n=product, simplify=FALSE, settings=list(solve="matrix"))] expect_equal(is.vector(gk.est1), TRUE) expect_equal(is.vector(gk.est2), TRUE) expect_equal(is.list(gk.est3), TRUE) expect_equal(is.list(gk.est4), TRUE) expect_equal(names(gk.est3), c("par","niter","tol")) expect_equal(names(gk.est4), c("par")) expect_equal(gk.est3$par, gk.est4$par) expect_equal(gk.est1[1], c("1"=1)) expect_equal(gk.est2[2], c("2"=1)) expect_equal(mean(gk.est), 1) expect_equal(gk.est1, gk.est/gk.est[1]) expect_equal(gk.est1, gk.est2/gk.est2[1]) # ikle(): ikd.est <- dt[, ikle(p=price, q=quantity, r=region, n=product, base=NULL)] ikd.est1 <- dt[, ikle(p=price, q=quantity, r=region, n=product, base="1")] ikd.est2 <- dt[, ikle(p=price, q=quantity, r=region, n=product, base="2")] ikd.est3 <- dt[, ikle(p=price, q=quantity, r=region, n=product, simplify=FALSE)] expect_equal(is.vector(ikd.est1), TRUE) expect_equal(is.vector(ikd.est2), TRUE) expect_equal(is.list(ikd.est3), TRUE) expect_equal(names(ikd.est3), c("par","niter","tol")) expect_equal(ikd.est1[1], c("1"=1)) expect_equal(ikd.est2[2], c("2"=1)) expect_equal(mean(ikd.est), 1) expect_equal(ikd.est1, ikd.est/ikd.est[1]) expect_equal(ikd.est1, ikd.est2/ikd.est2[1]) # rao(): rao.est <- dt[, rao(p=price, q=quantity, r=region, n=product, base=NULL)] rao.est1 <- dt[, rao(p=price, q=quantity, r=region, n=product, base="1")] rao.est2 <- dt[, rao(p=price, q=quantity, r=region, n=product, base="2")] rao.est3 <- dt[, rao(p=price, q=quantity, r=region, n=product, simplify=FALSE)] expect_equal(is.vector(rao.est1), TRUE) expect_equal(is.vector(rao.est2), TRUE) expect_equal(is.list(rao.est3), TRUE) expect_equal(names(rao.est3), c("par","niter","tol")) expect_equal(rao.est1[1], c("1"=1)) expect_equal(rao.est2[2], c("2"=1)) expect_equal(exp(mean(log(rao.est))), 1) # different to others! expect_equal(rao.est1, rao.est/rao.est[1]) expect_equal(rao.est1, rao.est2/rao.est2[1]) # rhajargasht(): rh.est <- dt[, rhajargasht(p=price, r=region, n=product, base=NULL)] rh.est1 <- dt[, rhajargasht(p=price, r=region, n=product, base="1")] rh.est2 <- dt[, rhajargasht(p=price, r=region, n=product, base="2")] rh.est3 <- dt[, rhajargasht(p=price, r=region, n=product, simplify=FALSE)] expect_equal(is.vector(rh.est1), TRUE) expect_equal(is.vector(rh.est2), TRUE) expect_equal(is.list(rh.est3), TRUE) expect_equal(names(rh.est3), c("par","niter","tol")) expect_equal(rh.est1[1], c("1"=1)) expect_equal(rh.est2[2], c("2"=1)) expect_equal(mean(rh.est), 1) expect_equal(rh.est1, rh.est/rh.est[1]) expect_equal(rh.est1, rh.est2/rh.est2[1]) # test quantities versus shares as weights: dt[, "share" := (price*quantity)/sum(price*quantity), by="region"] expect_equal( dt[, rao(p=price, q=quantity, r=region, n=product, base=NULL)], dt[, rao(p=price, w=share, r=region, n=product, base=NULL)] ) expect_equal( dt[, ikle(p=price, q=quantity, r=region, n=product, base=NULL)], dt[, ikle(p=price, w=share, r=region, n=product, base=NULL)] ) expect_equal( dt[, rhajargasht(p=price, q=quantity, r=region, n=product, base=NULL)], dt[, rhajargasht(p=price, w=share, r=region, n=product, base=NULL)] ) # Settings ---------------------------------------------------------------- # missing quantities: expect_no_error( dt[, gkhamis(p=price, r=region, n=product)] ) # missing quantities and weights: expect_no_error( dt[, rao(p=price, r=region, n=product)] ) # wrong setting: expect_error( dt[, gkhamis(p=price, q=quantity, r=region, n=product, settings=list(solve="abc"))] ) # negative tolerance not allowed: expect_error( dt[, gkhamis(p=price, q=quantity, r=region, n=product, settings=list(tol=-2))] ) # negative maximum number of iterations not allowed: expect_error( dt[, gkhamis(p=price, q=quantity, r=region, n=product, settings=list(max.iter=-2))] ) # solve-method not allowed: expect_error( dt[, ikle(p=price, q=quantity, r=region, n=product, settings=list(solve="matrix"))] ) # Non-connected data ------------------------------------------------------ # example data: set.seed(123) dt1 <- pricelevels::rdata(R=3, B=1, N=5) dt2 <- pricelevels::rdata(R=4, B=1, N=4) dt2[, "region":=factor(region, labels=4:7)] dt2[, "product":=factor(product, labels=6:9)] dt <- rbind(dt1, dt2) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="1", settings=list(chatty=FALSE, connect=TRUE))][1], c("1"=1) ) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="1", settings=list(chatty=FALSE, connect=TRUE))][4:7], setNames(rep(NA_real_, 4), 4:7) ) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="4", settings=list(chatty=FALSE, connect=TRUE))][1:3], setNames(rep(NA_real_, 3), 1:3) ) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="4", settings=list(chatty=FALSE, connect=TRUE))][4], c("4"=1) ) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="1", settings=list(chatty=FALSE, connect=TRUE, solve="matrix"))][1], c("1"=1) ) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="1", settings=list(chatty=FALSE, connect=TRUE, solve="matrix"))][4:7], setNames(rep(NA_real_, 4), 4:7) ) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="4", settings=list(chatty=FALSE, connect=TRUE, solve="matrix"))][1:3], setNames(rep(NA_real_, 3), 1:3) ) expect_equal( dt[, gkhamis(p=price, r=region, n=product, q=quantity, base="4", settings=list(chatty=FALSE, connect=TRUE, solve="matrix"))][4], c("4"=1) ) # Misc -------------------------------------------------------------------- # test if ikle(), gkhamis(), and gerardi() identical if no gaps # and quantities are the same across regions: set.seed(123) dt <- rdata(R=5, B=1, N=9, gaps=0) dt[, "quantity" := 1000*rleidv(product)] expect_equal( dt[, gkhamis(p=price, q=quantity, r=region, n=product, base=NULL)], dt[, ikle(p=price, q=quantity, r=region, n=product, base=NULL)] ) expect_equal( dt[, gkhamis(p=price, q=quantity, r=region, n=product, base=NULL)], dt[, gerardi(p=price, q=quantity, r=region, n=product, base=NULL)] ) expect_equal( dt[, gerardi(p=price, q=quantity, r=region, n=product, base=NULL)], dt[, ikle(p=price, q=quantity, r=region, n=product, base=NULL)] ) # test if unweighted are identical to weighted ones using weights of 1 # if there are no gaps (with gaps, renormalization of weights causes # differences): expect_equal( dt[, rao(p=price, w=rep(1,.N), r=region, n=product, base=NULL)], dt[, rao(p=price, r=region, n=product, base=NULL)] ) expect_equal( dt[, rhajargasht(p=price, w=rep(1,.N), r=region, n=product, base=NULL)], dt[, rhajargasht(p=price, r=region, n=product, base=NULL)] ) expect_equal( dt[, ikle(p=price, w=rep(1,.N), r=region, n=product, base=NULL)], dt[, ikle(p=price, r=region, n=product, base=NULL)] ) expect_equal( dt[, gkhamis(p=price, q=rep(1,.N), r=region, n=product, base=NULL)], dt[, gkhamis(p=price, r=region, n=product, base=NULL)] ) # test if rao() is identical to cpd() even if there are gaps: # see http://www.roiw.org/2005/2005-24.pdf set.seed(123) dt <- rdata(R=5, B=1, N=9, gaps=0.3) dt[, "share":=price*quantity/sum(price*quantity), by="region"] expect_equal( dt[, rao(p=price, r=region, n=product, base="1")], dt[, cpd(p=price, r=region, n=product, base="1")] ) expect_equal( dt[, rao(p=price, q=quantity, r=region, n=product, base="1")], dt[, cpd(p=price, q=quantity, r=region, n=product, base="1")] ) expect_equal( dt[, rao(p=price, q=quantity, r=region, n=product, base=NULL)], dt[, cpd(p=price, q=quantity, r=region, n=product, base=NULL)] ) expect_equal( dt[, rao(p=price, w=share, r=region, n=product, base="1")], dt[, cpd(p=price, w=share, r=region, n=product, base="1")] ) expect_equal( dt[, rao(p=price, w=share, r=region, n=product, base=NULL)], dt[, cpd(p=price, w=share, r=region, n=product, base=NULL)] ) # END