“…Instead of measuring the similarity between items or predicting sentiment rating on an item, it delves deeper into the text and focuses on extracting content units of different granularity (e.g., words, sentences) to summarize the commonalities and differences. With the rapid emergence of text-based data in many domains, automatic techniques for comparative text mining have a wide range of applications including social media analysis (e.g., opinion mining on twitter [27,18]), business intelligence (e.g., customer review analysis [14,12], news summarization [10,25,16]), and scientific literature study (e.g., patentability search [31] ... [11] Scaling Personalized Web Search [6] Topic-sensitive PageRank topic-sensitive@@ranking vector; context-specific importance score; topic-sensitive PageRank; query context; ... Figure 1: Example output of CDA for papers [11] and [6].…”