Looking at the plyr tutorial, I find the following preparation :
b2 <- ddply(baseball, "id", transform, cyear = year - min(year) + 1) b2 <- ddply(b2, "id", transform, career = (cyear - 1) / max(cyear)) bruth <- subset(b2, id == "ruthba01") # Could we model that as two straight lines? bruth$p <- (bruth$career - 0.5) * 100
now some model
mod <- lm(g ~ p + p:I(p > 0), data = bruth)
what is the difference with ?
mod <- lm(g ~ p + I(p > 0), data = bruth)
when I check
in both cases it yields the same columns with the same numbers.
yet the regression coefficients are entirely different...
any idea of what this notation means ?