This document provides an abstract for a paper on a novel ranking approach called Manifold Ranking with Sink Points (MRSP). MRSP addresses diversity, relevance, and importance in ranking by using manifold ranking over a data manifold to find relevant and important objects, while turning already ranked objects into "sink points" to prevent redundant objects from receiving a high rank. Experimental results on update summarization and query recommendation tasks showed MRSP performed better than existing ranking approaches by better addressing the importance of diversity in ranking.