An Exemplary Survey Implementation on Text Mining with Rapid Miner

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dc.contributor.author Kaltrina Nuredini; Faculty of Contemporary Sciences and Technologies, SEE University
dc.contributor.author Ozcan Asilkan; Epoka University, Department of Computer Engineering
dc.contributor.author Atixhe Ismaili; Faculty of Contemporary Sciences and Technologies, SEE University
dc.date 2013-06-18 05:56:46
dc.date.accessioned 2013-07-15T11:52:04Z
dc.date.accessioned 2015-11-23T16:01:15Z
dc.date.available 2013-07-15T11:52:04Z
dc.date.available 2015-11-23T16:01:15Z
dc.date.issued 2013-07-15
dc.identifier http://ecs.epoka.edu.al/index.php/iscim/iscim2011/paper/view/777
dc.identifier.uri http://dspace.epoka.edu.al/handle/1/748
dc.description.abstract Recently many disciplines such as databases, statistics, and information retrieval have affected the growth of data mining. By this phenomenon, data mininghad been allowing to extract information or knowledge from these data. Data mining employs diverse techniques based on this phenomenon, but most existing approach is data analysis and text mining. Text Mining allows various analyses for data representing the new framework known as Information Extraction. The extraction ofinformation from unstructured resources has released new paths for analyzing,organizing and querying data. Adapting and implementing these patterns has beentime-consuming in the past but with the use of some discovery tools now this taskhas been significantly easier. The first part of the study includes the mining of an unstructured text and the second part is visualization, both provided by Rapid Miner. The visualization part has some subparts which are directly related to the conducted survey dedicated to particular individuals. These subparts are; finding correlation between the attributes of people, determination of the most weighted attribute and clustering subpart which classifies a group of people that has moresimilarity between them. Each of these parts has been examined and shown by definitions, examples, analysis and conclusions.
dc.format application/pdf
dc.language en
dc.publisher International Symposium on Computing in Informatics and Mathematics
dc.source International Symposium on Computing in Informatics and Mathematics; 1st International Symposium on Computing in Informatics and Mathematics
dc.subject Data mining text mining; text processing; tokenization; clustering; correlation
dc.title An Exemplary Survey Implementation on Text Mining with Rapid Miner
dc.type Peer-reviewed Paper


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  • ISCIM 2011
    1st International Symposium on Computing in Informatics and Mathematics

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