Refactor Location Analysis: add narrative descriptions, clarify map/table context, and improve accessibility.
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report.Rmd
61
report.Rmd
@ -580,6 +580,9 @@ survey_data %>%
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```
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# Location Analysis {.tabset}
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[Back to Top](#)
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```{r func-plot_geographic_data, echo=TRUE}
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plot_geographic_data <- function(joined_data,
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title,
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@ -593,54 +596,42 @@ plot_geographic_data <- function(joined_data,
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na_fill_color = "lightgrey") {
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current_date <- format(Sys.Date(), "%B %d, %Y")
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# If subtitle is not provided, use the current date as subtitle
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subtitle_text <- ifelse(is.null(subtitle), paste("Date:", current_date), subtitle)
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# Handle missing data by filling with a specified color
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joined_data[is.na(joined_data$total_trees), "total_trees"] <- NA
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# Select the color scale based on the user's input
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if (color_scale == "viridis") {
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fill_color <- scale_fill_viridis_c(option = fill_option, na.value = na_fill_color) # Use na.value to fill NA
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fill_color <- scale_fill_viridis_c(option = fill_option, na.value = na_fill_color)
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} else if (color_scale == "RColorBrewer") {
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fill_color <- scale_fill_brewer(palette = "Set3") # Default RColorBrewer palette
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fill_color <- scale_fill_brewer(palette = "Set3")
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} else {
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fill_color <- scale_fill_manual(values = color_scale) # Custom color scale
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fill_color <- scale_fill_manual(values = color_scale)
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}
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# Create the plot
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plot <- ggplot(data = joined_data) +
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geom_sf(aes(fill = total_trees), color = "white") +
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fill_color + # Color scale for the plot
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theme_options + # Apply custom theme
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fill_color +
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theme_options +
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labs(title = title,
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subtitle = subtitle_text, # Subtitle is handled here
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subtitle = subtitle_text,
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fill = legend) +
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theme(axis.text = element_blank(), axis.title = element_blank(),
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theme(axis.text = element_blank(),
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axis.title = element_blank(),
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legend.position = legend_position)
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# If save_path is provided, save the plot to file
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if (!is.null(save_path)) {
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ggsave(save_path, plot = plot, width = 10, height = 6)
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}
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# Return the plot
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return(plot)
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}
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```
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[Back to Top](#)
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## By Region
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This map displays the **total number of trees planted** across each economic region in **New York State**. The counties are color-coded, with darker shades representing areas where more trees have been planted. This allows users to quickly see which counties have had the most extensive tree planting efforts.
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This map shows the **total number of trees planted** in each of New York’s economic development regions. The shading reflects the volume of planting activity, with darker areas representing higher totals.
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- **What to look for**:
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- **Dark colors**: Indicate regions with a higher number of trees planted.
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- **Lighter colors**: Represent regions with fewer trees planted.
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The map provides a visual overview of tree planting distribution across New York, making it easier to identify areas with the highest impact or need for further action.
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Use this map to identify which regions are leading in planting activity, and where more outreach or support might be beneficial.
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```{r create-region-choropleth-map, echo=TRUE, message=FALSE, fig.height=6, fig.width=8}
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survey_data_aggregated <- survey_data %>%
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@ -672,19 +663,19 @@ plot_geographic_data(joined_data = survey_data_joined,
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na_fill_color = "lightgrey")
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```
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### Regional Planting Summary
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The table below breaks down the total number of trees planted by region. It also shows each region’s percentage contribution to overall planting activity across New York State.
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```{r create-summary-table-region, echo=TRUE, message=FALSE, fig.height=6, fig.width=8}
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create_summary_table(survey_data, "Region", "Number of Trees Planted (Required)", remove_na = FALSE, table_font_size = 16)
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```
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## By County
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This map displays the **total number of trees planted** across each county in **New York State**. The counties are color-coded, with darker shades representing areas where more trees have been planted. This allows users to quickly see which counties have had the most extensive tree planting efforts.
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This map provides a county-level view of total trees planted. Darker counties indicate higher planting activity.
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- **What to look for**:
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- **Dark colors**: Indicate counties with a higher number of trees planted.
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- **Lighter colors**: Represent counties with fewer trees planted.
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The map provides a visual overview of tree planting distribution across New York, making it easier to identify areas with the highest impact or need for further action.
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This visual helps uncover local patterns within regions, and may guide localized support, outreach, or reporting strategies.
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```{r create-county-choropleth-map, echo=TRUE, message=FALSE, fig.height=6, fig.width=8}
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survey_data_aggregated <- survey_data %>%
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@ -693,12 +684,11 @@ survey_data_aggregated <- survey_data %>%
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geographic_data <- counties(state = "NY", cb = TRUE, progress = FALSE) %>%
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st_as_sf() %>%
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mutate(NAME = str_replace(NAME, "\\.", "")) # Remove period from "St. Lawrence"
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mutate(NAME = str_replace(NAME, "\\.", ""))
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survey_data_joined <- geographic_data %>%
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left_join(survey_data_aggregated, by = c("NAME" = "County"))
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# Example of calling the function with enhancements
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plot_geographic_data(joined_data = survey_data_joined,
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title = "Number of Trees Planted by County in New York",
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legend = "Total Trees Planted",
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@ -706,13 +696,16 @@ plot_geographic_data(joined_data = survey_data_joined,
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subtitle = "Generated: March 13, 2025",
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theme_options = theme_minimal(),
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legend_position = "right",
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color_scale = "viridis", # Default viridis scale
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na_fill_color = "lightgrey") # Color for NA values
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color_scale = "viridis",
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na_fill_color = "lightgrey")
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```
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```{r create-summary-table-county, echo=TRUE, message=FALSE, , fig.height=6, fig.width=8}
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create_summary_table(survey_data, "County", "Number of Trees Planted (Required)", remove_na = FALSE, table_font_size = 16)
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### County-Level Planting Summary
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This table provides a detailed breakdown of trees planted by county. Use it alongside the map to validate trends or investigate specific areas.
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```{r create-summary-table-county, echo=TRUE, message=FALSE, fig.height=6, fig.width=8}
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create_summary_table(survey_data, "County", "Number of Trees Planted (Required)", remove_na = FALSE, table_font_size = 16)
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```
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# Tree Analysis {.tabset}
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