IEEE Trans Cybern. 2022 Sep;52(9):9467-9480. doi: 10.1109/TCYB.2021.3054923. Epub 2022 Aug 18.
Co-location pattern mining plays an important role in spatial data mining. With the rapid growth of spatial datasets, the usefulness of co-location patterns is strongly limited by the huge amount of discovered patterns. Although several methods have been proposed to reduce the number of discovered patterns, these statistical algorithms are unable to guarantee that the extracted co-location patterns are user preferred. Therefore, it is crucial to help the decision maker discover his/her preferred co-location patterns via efficient interactive procedures. This article proposes a new interactive approach that enables the user to discover his/her preferred co-location patterns. First, we present a novel and flexible interactive framework to assist the user in discovering his/her preferred co-location patterns. Second, we propose using ontologies to measure the similarity of two co-location patterns. Furthermore, we design a pruning scheme by introducing a pattern filtering model for expressing the user's preference, to reduce the number of the final output. By applying our proposed approach over voluminous sets of co-location patterns, we show that the number of filtered co-location patterns is reduced to several dozen or less and, on average, 80% of the selected co-location patterns are user preferred.
共现模式挖掘在空间数据挖掘中起着重要作用。随着空间数据集的快速增长,共现模式的有用性受到发现模式数量巨大的强烈限制。尽管已经提出了几种方法来减少发现的模式的数量,但是这些统计算法不能保证提取的共现模式是用户首选的。因此,通过有效的交互过程帮助决策者发现他/她首选的共现模式至关重要。本文提出了一种新的交互式方法,使用户能够发现他/她首选的共现模式。首先,我们提出了一种新颖灵活的交互框架,以帮助用户发现他/她首选的共现模式。其次,我们提出使用本体来测量两个共现模式之间的相似性。此外,我们通过引入模式过滤模型来表达用户的偏好,设计了一种剪枝方案,以减少最终输出的数量。通过在大量的共现模式集上应用我们提出的方法,我们表明过滤后的共现模式数量减少到几十个或更少,并且平均有 80%的选择的共现模式是用户首选的。