I´ve looked for similiar questions, but wasn´t very sucessful.

I want to display my regression equations / coefficients under my ggplot as a text output.
Right now, I can display the regression equation in the graph with `ggpmisc::stat_poly_eq()`

, which works just as intended.
For later on, I want to use ggploty for a nicer looking graph and some additional outputs (hover e.g.). But the function `ggpmisc::stat_poly_eq()`

doesn´t seem to work with plotly. So my approach was to display the regression equations under my graph, but if I add groups, the lm function doesn´t display the right coefficients.

My example dataset consists of 2 trails ("V1" and "V2"), which consists of three values. These are divided into different groups ("1" and "2"). I want a shiny app, where I can select my trial, which x and y variable I want to plot against each other and by which group. These inputs should be dynamic, because in the real dataset, there are of course multiple "trials", "values" and "groups".

```
library(shiny)
library(ggplot2)
library(ggpmisc)
library(jtools)
trialNumber <- c("V1","V1","V1","V1","V1","V2","V2","V2","V2","V2","V2","V2")
value1 <- c(40,25,23,18,30,2,1,50,10,20,28,19)
value2 <- c(80,50,50,30,65,5,20,80,20,40,38,31)
value3 <- c(20,30,25,31,50,11,20,40,20,50,38,20)
group <- c(1,1,1,2,2,1,1,1,1,2,2,2)
mydf <- data.frame(trialNumber, value1, value2, value3, group)
mydf$group <- as.factor(mydf$group)
ui <- fluidPage(
selectInput("selection","Which trial should be displayed?",
choices = mydf$trialNumber,
multiple = FALSE,
selected = "V1"),
selectInput("x_variable","Choose x-variable",
choices = names(mydf),
multiple = FALSE,
selected = "value1"),
selectInput("y_variable","Choose y-variable",
choices = names(mydf),
multiple = FALSE,
selected = "value2"),
selectInput("group","Choose group",
choices = c(1,2),
multiple = FALSE,
selected = 1),
verbatimTextOutput("regression_info"),
plotOutput("plot")
)
server <- function(input, output, session) {
reactive_df <- reactive({
data <- mydf
data <- data[data$trialNumber == input$selection,]
})
output$plot <- renderPlot({
data <- reactive_df()
p <- ggplot2::ggplot(data) +
aes(x = data[,input$x_variable],
y = data[,input$y_variable],
colour = group) + # does not work with: data[,input$group] <-- why?
geom_point() +
geom_smooth(method = "lm",formula = y~x) +
ggpmisc::stat_poly_eq(formula = y ~ x,aes(label = paste(..eq.label.., ..rr.label.., sep = "~~~")),parse = TRUE)
print(p)
})
output$regression_info <- renderPrint({
data = mydf
jtools::summ(fit <- lm(data = data, formula = data[,input$y_variable] ~ data[,input$x_variable] ))
# + data[,input$group] # --> Does also not work, why?
})
}
shinyApp(ui,server)
```

So my questions:

- How can I display my "correct" regression equations by groups under the graph? (I´ve already looked into
`nlme::lmlist()`

which works for me in a non shiny enviroment, but not with variable inputs or reactive datasets - Additional question: How can I display the regression equation in the graph when using ggplotly?
- and of course: Is there a better way to do this?

Thanks in advance!

`input$group`

? So far, you only have`group`

as your only grouping variable in the dataset. However, in`input$group`

you can choose between the different levels of this grouping variable, but your calculations are not restricted to the chosen level (they are only separated by the levels, but the results of all levels are shown). Therefore I don't know if you need it as an input – starja Nov 23 '20 at 21:28