5,842 research outputs found

    Interactive tag maps and tag clouds for the multiscale exploration of large spatio-temporal datasets

    Get PDF
    'Tag clouds' and 'tag maps' are introduced to represent geographically referenced text. In combination, these aspatial and spatial views are used to explore a large structured spatio-temporal data set by providing overviews and filtering by text and geography. Prototypes are implemented using freely available technologies including Google Earth and Yahoo! 's Tag Map applet. The interactive tag map and tag cloud techniques and the rapid prototyping method used are informally evaluated through successes and limitations encountered. Preliminary evaluation suggests that the techniques may be useful for generating insights when visualizing large data sets containing geo-referenced text strings. The rapid prototyping approach enabled the technique to be developed and evaluated, leading to geovisualization through which a number of ideas were generated. Limitations of this approach are reflected upon. Tag placement, generalisation and prominence at different scales are issues which have come to light in this study that warrant further work

    Exploratory Analysis of Highly Heterogeneous Document Collections

    Full text link
    We present an effective multifaceted system for exploratory analysis of highly heterogeneous document collections. Our system is based on intelligently tagging individual documents in a purely automated fashion and exploiting these tags in a powerful faceted browsing framework. Tagging strategies employed include both unsupervised and supervised approaches based on machine learning and natural language processing. As one of our key tagging strategies, we introduce the KERA algorithm (Keyword Extraction for Reports and Articles). KERA extracts topic-representative terms from individual documents in a purely unsupervised fashion and is revealed to be significantly more effective than state-of-the-art methods. Finally, we evaluate our system in its ability to help users locate documents pertaining to military critical technologies buried deep in a large heterogeneous sea of information.Comment: 9 pages; KDD 2013: 19th ACM SIGKDD Conference on Knowledge Discovery and Data Minin

    Comparative cluster labelling involving external text sources

    Get PDF
    Giving clear, straightforward names to individual result groups of clustering data is most important in making research usable. This is especially so when clustering is the real outcome of the analysis and not just a tool for data preparation. In this case, the underlying concept of the cluster itself makes the result meaningful and useful. However, a cluster comes alive only in the investigator’s mind since it can be defined or described in words. Our method introduced in this paper aims to facilitate and partly automate this verbal characterisation process. The external text database is joined to the objects of the clustering that adds new, previously unused features to the data set. Clusters are described by labels produced by text mining analytics. The validity of clustering can be characterised by the shape of the final word cloud
    corecore