2 research outputs found

    Dependency graph for short text extraction and summarization

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    A sheer amount of text generated from microblogs and social media brings huge opportunities to the text mining applications. Many techniques such as sentiment analysis and opinion mining are proven effective to deliver insights from documents. However, most of these textual data are in the form of short and fragmented texts which are difficult to visually extract due to the sparsity issue and the context in the content is often unknown. Naive while widely used models, term frequency and the bag-of-words never considered the semantic relationship between the words, making the results relatively difficult to interpret. A well-known technique in text mining like topic model may provide a general ‘at glance’ understanding but can be difficult to interpret or to understand. One alternative is to aggregate words in a semantical order and generates an output of human-understandable sentences. In this paper, we address this direction by proposing the belief graph data model that joins short texts by inducing the part-of-speech tagging to maintain the order and to preserve the context of the content. Extensive experiments showed that our approach improves the overall qualitative evaluation of text understanding compared to the previous state of the art text mining techniques

    Dependency graph for short text extraction and summarization

    No full text
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