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EDA FOR CWS
EDA FOR CWS
Cameron County Population Density Map (45 and older) (ACS 2022 | 2018 to 2022)
This is a set of maps that show which parts of Cameron County have the highest proportion of people aged 45 and older; these would be most relevant to secondary prevention and, to some extent, tertiary prevention. The top map, "Percentage (%) of Population age 45 and over", illustrates the proportion of people who are 65 and older as divided by the population in that tract, multiplied by 100. The bottom map, "Raw # of Population age 45 and over", shows the numerator for that proportion calculation; essentially, how many people 65 and older are *actually* living in that Census tract. These can be considered a map of the 'high risk' people with respect to ADRD in Cameron County when considering age alone. .. (you'll need 'tidyverse', 'tm', 'tidycensus', 'sf', and 'cwi' from DataHaven for ACS labeling) Code:: get_acs("tract", table = "B01001", state = "TX", county = "Cameron", year= 2022, survey = "acs5", geometry = TRUE) %>% label_acs(.) %>% separate_wider_delim(., cols = "label", delim = "!!", names_sep = "", too_few = "align_start") %>% separate_wider_delim(., cols = "variable", delim = "_", names_sep = "", too_few = "align_start") %>% mutate(variable2 = as.numeric(variable2)) %>% filter(variable2 != "1" & variable2 != "2" & variable2!= "26") %>% filter(variable2 > 6 & variable2 < 26 | variable2 > 30 & variable2 <=49) %>% transform(., tract_pop_sum = ave(.$estimate, .$NAME, FUN=sum)) %>% mutate(tract_pop_prop = estimate/tract_pop_sum, test = if_else(variable2 > 14 & variable2 < 26 | variable2>38 & variable2<=49,"atrisk","norm")) %>% group_by(test, NAME) %>% mutate(atrisk_sum = sum(estimate)) %>% transform(., tract_pop_sum = ave(.$estimate, .$NAME, FUN=sum)) %>% mutate(tract_pop_prop = estimate/tract_pop_sum, test = if_else(variable2 > 14 & variable2 < 26 | variable2>38 & variable2<=49,"atrisk","norm")) %>% group_by(test, NAME) %>% mutate(atrisk_sum = sum(estimate), prop_atrisk = 100 * atrisk_sum/tract_pop_sum) -> cam_pop_tracts_votingage cam_pop_tracts_votingage %>% filter(test == "atrisk") %>% st_as_sf(.) %>% dplyr::select(prop_atrisk, test, atrisk_sum, geometry, NAME) %>% drop_na(.) %>% unique(.) %>% mutate(prop_atrisk = round(prop_atrisk, 1)) %>% dplyr::rename(., "Percentage (%) of Population age 45 and over"=1, "Raw # of Population age 45 and over"=3) %>% tm_shape(.) + tm_polygons(col=c("Percentage (%) of Population age 45 and over", "Raw # of Population age 45 and over"), alpha=0.6, style="jenks", palette="Reds") + tm_layout(legend.outside = "TRUE") + tm_facets(nrow = 2, sync = TRUE)
Rancangan Acak Kelompok Lengkap (RAKL)
Rancangan Acak kelompok adalah suatu rancangan acak yang dilakukan dengan mengelompokkan satuan percobaan ke dalam grup-grup yang homogen yang dinamakan kelompok dan kemudian menentukan perlakuan secara acak di dalam masing-masing kelompok.
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Residuals versus Fitted
Breusch-Pagan test to follow
Test Publishing
Caucho_
Se hace una observación de básica estadística descriptiva de datos relacionadas a la producción de latex de caucho natural a nivel nacional, departamental (Antioquia) y municipal (El Bagre). La base de datos corresponde a las Evaluciones Agropeuarias municipales.
coimabtore_Street _ights
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