Discovering story chains: A framework based on zigzagged search and news actors
提出一个框架,通过锯齿形搜索和新闻行动者社交网络,从文本集合中发现关联新闻的故事链,用户研究显示其在相关性、覆盖率、连贯性和关系揭示能力上显著优于基线方法。
A story chain is a set of related news articles that reveal how different events are connected. This study presents a framework for discovering story chains, given an input document, in a text collection. The framework has 3 complementary parts that i) scan the collection, ii) measure the similarity between chain‐member candidates and the chain, and iii) measure similarity among news articles. For scanning, we apply a novel text‐mining method that uses a zigzagged search that reinvestigates past documents based on the updated chain. We also utilize social networks of news actors to reveal connections among news articles. We conduct 2 user studies in terms of 4 effectiveness measures— relevance , coverage , coherence , and ability to disclose relations . The first user study compares several versions of the framework, by varying parameters, to set a guideline for use. The second compares the framework with 3 baselines. The results show that our method provides statistically significant improvement in effectiveness in 61% of pairwise comparisons, with medium or large effect size; in the remainder, none of the baselines significantly outperforms our method.