Kidwell Paul, Lebanon Guy, Cleveland William S
Department of Statistics, Purdue University.
IEEE Trans Vis Comput Graph. 2008 Nov-Dec;14(6):1356-63. doi: 10.1109/TVCG.2008.181.
Ranking data, which result from m raters ranking n items, are difficult to visualize due to their discrete algebraic structure, and the computational difficulties associated with them when n is large. This problem becomes worse when raters provide tied rankings or not all items are ranked. We develop an approach for the visualization of ranking data for large n which is intuitive, easy to use, and computationally efficient. The approach overcomes the structural and computational difficulties by utilizing a natural measure of dissimilarity for raters, and projecting the raters into a low dimensional vector space where they are viewed. The visualization techniques are demonstrated using voting data, jokes, and movie preferences.
排名数据由m个评分者对n个项目进行排名产生,由于其离散代数结构以及当n较大时与之相关的计算困难,很难进行可视化。当评分者提供并列排名或并非所有项目都被排名时,这个问题会变得更糟。我们开发了一种针对n较大时排名数据的可视化方法,该方法直观、易于使用且计算效率高。该方法通过利用评分者之间自然的差异度量,并将评分者投影到一个低维向量空间中进行观察,克服了结构和计算上的困难。使用投票数据、笑话和电影偏好展示了这些可视化技术。