Using position_jitter creates random jitter to prevent overplotting of data points.
In the below I have used the example of baseball statistics to illustrate my problem. When I plot the same data with two layers, the same jitter call jitters the geoms a bit differently. This makes sense because it presumably generates the random jitter independently in the two calls, but yields the problem you can see in my graph below.
p=ggplot(baseball,aes(x=round(year,-1),y=sb,color=factor(lg))) p=p+stat_summary(fun.data="mean_cl_normal",position=position_jitter(width=3,height=0))+coord_cartesian(ylim=c(0,40)) p+stat_summary(fun.y=mean,geom="line",position=position_jitter(width=3,height=0))
Although the error bar points and the line refer to same data, they are disjointed—the lines and points do not connect.
Is there a work-around for this? I thought position dodge might be the answer but it doesn't seem to work with these kinds of plots. Alternatively, maybe there's some way to get the mean_cl_normal call to also add the lines?