| |
| |
| |
| |
|
|
| rm(list = ls()) |
| require(foreign) |
| require(ggplot2) |
| require(RColorBrewer) |
| require(scales) |
| require(plyr) |
| require(dplyr) |
| require(haven) |
| require(dotwhisker) |
|
|
| |
|
|
| |
| makeFootnote <- function(footnoteText = |
| format(Sys.time(), "%d %b %Y"), |
| size = .7, color = grey(.5)) |
| { |
| require(grid) |
| pushViewport(viewport()) |
| grid.text(label = footnoteText , |
| x = unit(1,"npc") - unit(2, "mm"), |
| y = unit(2, "mm"), |
| just = c("right", "bottom"), |
| gp = gpar(cex = size, col = color)) |
| popViewport() |
| } |
| |
|
|
| |
|
|
| |
|
|
| |
| aesthetics <- list( |
| theme_bw(), |
| theme(text=element_text(family="Palatino"), |
| legend.title=element_blank(), |
| |
| |
| |
| |
| plot.background=element_rect(colour="white",fill="white"), |
| panel.grid.major=element_blank(), |
| panel.grid.minor=element_blank(), |
| axis.text.x=element_text(angle=45, face="bold",hjust=1), |
| axis.title.y=element_text(face="bold.italic"))) |
| |
| |
| |
|
|
| |
|
|
| |
|
|
| |
| data <- read.csv("./Output/Temp/MinorCropProduction.csv") |
| data <- filter(data,estimate!=0) |
|
|
| |
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1 - alpha / 2) |
|
|
| |
| data$idstr <- as.character(data$idstr) |
| data$y_var <- data$idstr |
| data <- filter(data,y_var!="S5BEJOTE", |
| y_var!="S5BMELON", |
| y_var!="S5BCAMOTE") |
| |
| data$y_var[which(data$y_var == "S5BCAMOTE")] <- "Sweet Potato" |
| data$y_var[which(data$y_var == "S5BCHILE")] <- "Bell Peppers" |
| data$y_var[which(data$y_var == "S5BCHILEPICANTE")] <- "Chile" |
| data$y_var[which(data$y_var == "S5BEJOTE")] <- "Bejote" |
| data$y_var[which(data$y_var == "S5BGUISQUIL")] <- "Squash" |
| data$y_var[which(data$y_var == "S5BLOROCO")] <- "Loroco" |
| data$y_var[which(data$y_var == "S5BMELON")] <- "Melon" |
| data$y_var[which(data$y_var == "S5BPEPINO")] <- "Cucumber" |
| data$y_var[which(data$y_var == "S5BPIPIAN")] <- "Pipian" |
| data$y_var[which(data$y_var == "S5BRABANO")] <- "Radish" |
| data$y_var[which(data$y_var == "S5BSANDIA")] <- "Watermelon" |
| data$y_var[which(data$y_var == "S5BTOMATE")] <- "Tomato" |
| data$y_var[which(data$y_var == "S5BYUCA")] <- "Yuca" |
|
|
| |
| betas <- data %>% filter(!grepl("S5B",y_var)) |
| dim(betas) |
| betas <- arrange(betas,betas$y_var) |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimate","stderr","z","p","idnum")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "TValue", "PValue", "ModelName") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = MatrixofModels$IV) |
| |
|
|
| |
| MatrixofModels$ModelName <- "Minor Vegetable Production" |
| |
|
|
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nEstimated Effect") + aesthetics + xlab("") |
|
|
| |
| OutputPlot |
| ggsave(filename = "./Output/CoefPlot_MinorCrops.pdf", height=6, width=9) |
|
|
| |
|
|
| |
|
|
| |
| data <- read.csv("./Output/Temp/MinorFruitProduction.csv") |
| data <- filter(data,estimate!=0) |
| |
|
|
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1 - alpha / 2) |
|
|
| |
| data$idstr <- as.character(data$idstr) |
| data$y_var <- data$idstr |
| |
| data$y_var[which(data$y_var == "S8BCOCO")] <- "Coconut" |
| data$y_var[which(data$y_var == "S8BGUINEO")] <- "Guineo Banana" |
| data$y_var[which(data$y_var == "S8BJOCOTE")] <- "Jocote" |
| data$y_var[which(data$y_var == "S8BLIMON")] <- "Lemon" |
| data$y_var[which(data$y_var == "S8BMANDARINA")] <- "Mandarin" |
| data$y_var[which(data$y_var == "S8BMANGO")] <- "Mango" |
| data$y_var[which(data$y_var == "S8BNARANJA")] <- "Orange" |
| data$y_var[which(data$y_var == "S8BNISPERO")] <- "Medlar" |
| data$y_var[which(data$y_var == "S8BPAPAYA")] <- "Papaya" |
| data$y_var[which(data$y_var == "S8BPLATANO")] <- "Plantain" |
| data$y_var[which(data$y_var == "S8BZAPOTE")] <- "Sapodilla" |
|
|
| |
| betas <- data %>% filter(!grepl("S8B",y_var)) |
| dim(betas) |
| betas <- arrange(betas,betas$y_var) |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimate","stderr","z","p","idnum")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "TValue", "PValue", "ModelName") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = MatrixofModels$IV) |
| |
|
|
| |
| MatrixofModels$ModelName <- "Minor Fruit Production" |
| |
|
|
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nEstimated Effect") + aesthetics + xlab("") |
|
|
| |
| OutputPlot |
| ggsave(filename = "./Output/CoefPlot_MinorFruits.pdf", height=6, width=9) |
|
|
| |
|
|
| |
|
|
| |
| data <- read.csv("./Output/Temp/InputUse.csv") |
| data <- filter(data,estimate!=0) |
| |
|
|
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1 - alpha / 2) |
|
|
| |
| data$idstr <- as.character(data$idstr) |
| data$y_var <- data$idstr |
| data <- filter(data,y_var!="S15BCASTRACION", |
| y_var!="S15BCONTROLBIOLOGICOPECESABEJAS", |
| y_var!="S15BCONTROLQUIMICODEPLAGASYENFE", |
| y_var!="S15BDESPARASITACION", |
| y_var!="S15BDESPARASITANTES", |
| y_var!="S15BINSEMINACIONARTIFICIAL", |
| y_var!="S15BMANEJOINTEGRADODEPLAGASMIP", |
| y_var!="S15BMEJORAMIENTOGENETICO", |
| y_var!="S15BPIEDECRIA", |
| y_var!="S15BPRACTICASPREVENTIVASDEDANOS", |
| y_var!="S15BPRODUCTOSVETERINARIOSALCOHO", |
| y_var!="S15BREGISTROSADMINISTRATIVOSDEL", |
| y_var!="S15BREGULADORESDECRECIMIENTO", |
| y_var!="S15BREGULADORESDECRECIMIENTOENZ", |
| y_var!="S15BROTACIONDEPOTREROS", |
| y_var!="S15BSUPLEMENTOSNUTRICIONALES", |
| y_var!="S15BVACUNACION", |
| y_var!="S15BVACUNAS", |
| y_var!="S15BANTIBIOTICOS") |
|
|
| |
| |
| data$y_var[which(data$y_var == "S15BABONOOFERTILIZANTEFOLIARLIQ" )] <- "Fertilizer - Liquid" |
| data$y_var[which(data$y_var == "S15BABONOOFERTILIZANTEGRANULARS" )] <- "Fertilizer - Solid" |
| data$y_var[which(data$y_var == "S15BAGENTESDEMADURACIONPOSTCOSE" )] <- "Compost" |
| data$y_var[which(data$y_var == "S15BAGENTESPARAPROTECCIONDEPROD" )] <- "Pesticides" |
| data$y_var[which(data$y_var == "S15BANALISISDESUELOYOFOLIAR" )] <- "Soil Tests" |
| data$y_var[which(data$y_var == "S15BAPLICACIONDEABONOYFERTILIZA" )] <- "Fertilizer Applied" |
| data$y_var[which(data$y_var == "S15BAPLICACIONDERIEGOPORASPERSI" )] <- "Sprinkler Irrigation" |
| data$y_var[which(data$y_var == "S15BAPLICACIONDERIEGOPORGOTEO" )] <- "Drip Irrigation" |
| data$y_var[which(data$y_var == "S15BAPLICACIONDERIEGOPORGRAVEDA" )] <- "Gravity Irrigation" |
| data$y_var[which(data$y_var == "S15BBACTERICIDAS" )] <- "Bactericides" |
| data$y_var[which(data$y_var == "S15BFUNGICIDAS" )] <- "Fungicides" |
| data$y_var[which(data$y_var == "S15BLABORESCULTURALES" )] <- "Labor Trimming" |
| data$y_var[which(data$y_var == "S15BMATERIALVEGETATIVO" )] <- "Organic Fertilizer" |
| data$y_var[which(data$y_var == "S15BNEMATICIDAS" )] <- "Nematicides" |
| data$y_var[which(data$y_var == "S15BOBRASDECONSERVACIONDESUELOS" )] <- "Erosion Work" |
| data$y_var[which(data$y_var == "S15BPREPARACIONDELSUELO" )] <- "Soil Preparation" |
| data$y_var[which(data$y_var == "S15BPROTECCIONDECULTIVOS" )] <- "Crop Protection" |
| data$y_var[which(data$y_var == "S15BRESIEMBRAYOREPLANTACION" )] <- "Reseeding + Replanting" |
| data$y_var[which(data$y_var == "S15BSEMILLACERTIFICADA" )] <- "Certified Seeds" |
| data$y_var[which(data$y_var == "S15BSEMILLACRIOLLA" )] <- "Creole Seeds" |
| data$y_var[which(data$y_var == "S15BSEMILLAMEJORADA" )] <- "Improved Seeds" |
|
|
| |
| betas <- data %>% filter(!grepl("S15B",y_var)) |
| dim(betas) |
| betas <- arrange(betas,betas$estimate) |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimate","stderr","z","p","idnum")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "TValue", "PValue", "ModelName") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = MatrixofModels$IV) |
| |
|
|
| |
| MatrixofModels$ModelName <- "Input Use" |
| |
|
|
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nEstimated Effect") + aesthetics + xlab("") |
|
|
| |
| OutputPlot |
| ggsave(filename = "./Output/CoefPlot_Inputs.pdf", height=6, width=9) |
|
|
| |
|
|
| |
| data <- read.csv("./Output/Temp/CapitalStocks.csv") |
| data <- filter(data,estimate!=0 & !is.na(p)) |
|
|
| |
| alpha<- 0.05 |
| Multiplier <- qnorm(1-alpha/2) |
| Multiplier <- qt(1 - alpha / 2, df=75) |
|
|
| |
| data$idstr <- as.character(data$idstr) |
| data$y_var <- gsub("S16A","",data$idstr) |
| data <- filter(data,y_var!="ALIMENTADORES", |
| y_var!="AUTOCLAVE", |
| y_var!="BANDADEINCUBACION", |
| y_var!="DESPLUMADORAS", |
| y_var!="EQUIPODEIDENTIFICACION", |
| y_var!="EQUIPOPARAINSEMINACIONARTIF", |
| y_var!="EQUIPOPARAORDENO", |
| y_var!="EQUIPOPREVENTIVODEDANOSENAN", |
| y_var!="ESTABLOS", |
| y_var!="GALERAS", |
| y_var!="INFRAESTRUCTURAPARAALIMENTA", |
| y_var!="LABORATORIOINVITRO", |
| y_var!="LABORATORIOSDEANALISISDESUE", |
| y_var!="MANGASOCEPOS", |
| y_var!="MAQUINARIAPARAPRODUCCIONDEA", |
| y_var!="OTROSTALLERESPISTADEATERRIZ", |
| y_var!="MOLEDORADEGRANOS", |
| y_var!="REDES", |
| y_var!="SALASDEINCUBACION", |
| y_var!="SALASDEORDENO", |
| y_var!="BANDARECOLECTORADEHUEVOS", |
| y_var!="CLASIFICADORADEFRUTALESHORT", |
| y_var!="UTENSILIOSPARARECOLECCIONDE", |
| y_var!="HERRAMIENTASAGROPECUARIAS", |
| y_var!="TANQUESDEFERTIRRIEGO", |
| y_var!="SALASDECURADO") |
|
|
| |
| |
| data$y_var[which(data$y_var == "ARADOSDEHIERRO")] <- "Plows" |
| data$y_var[which(data$y_var == "BALANZAPARACARGASPESADAS")] <- "Balances" |
| data$y_var[which(data$y_var == "BASCULA")] <- "Coffee Weighing Machines" |
| data$y_var[which(data$y_var == "BODEGAS")] <- "Wharehouses" |
| data$y_var[which(data$y_var == "BOMBAACHICADORAMECANICA")] <- "Fumigation Backpacks" |
| data$y_var[which(data$y_var == "CAMIONOVEHICULOS")] <- "Trucks" |
| data$y_var[which(data$y_var == "DESPULPADORADECAFEMANUAL")] <- "Manual Coffee Pulping Machines" |
| data$y_var[which(data$y_var == "DESPULPADORADECAFEMECANICA")] <- "Mecanical Coffee Pulping Machines" |
| data$y_var[which(data$y_var == "EQUIPOBENEFICIADORCAFE")] <- "Coffee Equipement" |
| data$y_var[which(data$y_var == "EQUIPODEFUMIGACION")] <- "Fumigation Equipement" |
| data$y_var[which(data$y_var == "EQUIPODERIEGO")] <- "Irrigration Equipement" |
| data$y_var[which(data$y_var == "EQUIPODETRANSPORTEDEAGUA")] <- "Water Transportation Equipement" |
| data$y_var[which(data$y_var == "EQUIPOPARALACOSECHA")] <- "Harvest Equipment" |
| data$y_var[which(data$y_var == "HERRAMIENTASAGROPECUARIAS")] <- "Agrigultural Tools" |
| data$y_var[which(data$y_var == "MANGUERAS")] <- "Hoses" |
| data$y_var[which(data$y_var == "MOTOSIERRAS")] <- "Saws" |
| data$y_var[which(data$y_var == "OFICINAS")] <- "Offices" |
| data$y_var[which(data$y_var == "PATIOSDESECADO")] <- "Drying Patios" |
| data$y_var[which(data$y_var == "PICADORADEPASTO")] <- "Lawnmowers" |
| data$y_var[which(data$y_var == "RASTRASYMONTACARGAS")] <- "Harrows" |
| data$y_var[which(data$y_var == "SEMBRADORAMECANICA")] <- "Mecanical Seeders" |
| data$y_var[which(data$y_var == "SILOSPARAFORRAJEFRESCO")] <- "Storage Silos" |
| data$y_var[which(data$y_var == "TANQUESDEFERTIRRIEGO")] <- "Irrigation Tanks" |
| data$y_var[which(data$y_var == "TANQUESPARAALMACENAMIENTODE")] <- "Water Storage Tanks" |
| data$y_var[which(data$y_var == "TOLDODERECIBIDERODECAFE")] <- "Coffee Drying Tarps" |
| data$y_var[which(data$y_var == "TRACTORES")] <- "Tractors" |
| data$y_var[which(data$y_var == "UTENSILIOSPARARECOLECCIONDE")] <- "UTENSILIOSPARARECOLECCIONDE" |
| data$y_var[which(data$y_var == "VIVIENDAS")] <- "Houses" |
| data$y_var[which(data$y_var == "BALANZADEPRECISION")] <- "Precision Scales" |
| data$y_var[which(data$y_var == "DESOPERCULADORYOTRASHERRAMI")] <- "Uncapper" |
| data$y_var[which(data$y_var == "EQUIPOPARAALIMENTACION")] <- "Feeding Equipement" |
| data$y_var[which(data$y_var == "EQUIPODECALEFACCION")] <- "Heating Equipement" |
| data$y_var[which(data$y_var == "PULVERIZADORES")] <- "Spraying Equipement" |
| data$y_var[which(data$y_var == "ESPATULAS")] <- "Spatulas" |
| data$y_var[which(data$y_var == "EXTRATORDEMIEL")] <- "Honey Extractor" |
| data$y_var[which(data$y_var == "VESTIMENTAESPECIAL")] <- "Special Clothing" |
| data$y_var[which(data$y_var == "AHUMADORES")] <- "Smoking Equipement" |
| data$y_var[which(data$y_var == "PORQUERIZAS")] <- "Pig Equipement" |
|
|
| data <- filter(data,y_var!="Offices", y_var!="Wharehouses", |
| y_var!="Lawnmowers", |
| y_var!="Water Storage Tanks", |
| y_var!="Storage Silos") |
|
|
| |
| betas <- data %>% filter(!grepl("S16B",y_var)) |
| dim(betas) |
| betas <- arrange(betas,betas$estimate) |
|
|
| |
| MatrixofModels <- betas[c("y_var", "estimate","stderr","z","p","idnum")] |
| colnames(MatrixofModels) <- c("IV", "Estimate", "StandardError", "TValue", "PValue", "ModelName") |
| MatrixofModels$IV <- factor(MatrixofModels$IV, levels = MatrixofModels$IV) |
| |
|
|
| |
| |
|
|
| |
| OutputPlot <- qplot(IV, Estimate, ymin = Estimate - Multiplier * StandardError, |
| ymax = Estimate + Multiplier * StandardError, data = MatrixofModels, geom = "pointrange", |
| ylab = NULL, xlab = NULL) |
| OutputPlot <- OutputPlot + geom_hline(yintercept = 0, lwd = I(7/12), colour = I(hsv(0/12, 7/12, 7/12)), alpha = I(5/12)) |
| OutputPlot <- OutputPlot + theme_bw() + ylab("\nRD Estimate") + aesthetics + xlab("") |
|
|
| |
| OutputPlot |
|
|
| |
| coffee_goods <- c("Coffee-Specific Capital", |
| "Manual Coffee Pulping Machines", |
| "Mecanical Coffee Pulping Machines", |
| "Coffee Equipement", |
| "Drying Patios", |
| "Coffee Weighing Machines", |
| "Balances", |
| "Water Storage Tanks", |
| "Coffee Drying Tarps") |
|
|
|
|
| MatrixofModels <- suppressWarnings(MatrixofModels %>% mutate(Group = ifelse(IV %in% coffee_goods,1,0), |
| term=IV, |
| estimate= Estimate, |
| std.error = StandardError) %>% |
| arrange(-Group, -IV)) |
|
|
| |
| bracket1 <- c("Coffee-Specific Capital", |
| "Coffee Weighing Machines", |
| "Mecanical Coffee Pulping Machines") |
| bracket2 <- c("General Ag. Capital", |
| "Hoses", |
| "Trucks") |
|
|
| brackets <- list(bracket1, bracket2) |
|
|
| {dwplot(MatrixofModels, vline = geom_vline(xintercept = 0, colour = "red", linetype = 2), |
| dot_args = list(color="black"), |
| whisker_args = list(color="black")) + |
| theme_bw() + xlab("RD Estimate") + ylab("") + |
| theme(plot.title = element_text(face="bold"), |
| legend.title = element_blank(), text=element_text(family="Palatino"))} %>% |
| add_brackets(brackets, face="bold") |
| |
| ggsave(filename = "./Output/CoefPlot_Capital_wBrackets.pdf", scale=2) |
|
|
|
|
|
|