This document proposes using dynamic collective entity representations to improve entity ranking. It describes enriching static entity representations from knowledge bases with descriptions from dynamic sources like tweets, queries, and tags. An adaptive ranking model individually weights each description source and retrains over time using clicks. Experimental results show expanding representations and retraining the ranker improves ranking performance compared to a non-adaptive model, with different sources providing varying benefits depending on their dynamic nature and entity coverage.