If you remove terms from a model, the R-squared goes down. It doesn't matter if you use backwards stepwise, or any other method, that's what happens.
Now, about your question: "I believe I am trading accuracy for a shorter equation, basically. Correct?" You are the one who brought this up first, you wanted to remove insignificant terms from a model. You get a shorter equation, yes, at the expense of a lower R-squared. However, I wouldn't say you have less accuracy here when you remove terms like this ... you have reduced the precision (increased the variance) of the estimates of predicted value, within the level of noise.