An analysis of election-related tweets through topic modeling / Francis Xavier S. Apostol [and three others]
Material type:
- UGT CCIT BSCS-DF .A66 2016

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National University - Manila | LRC - Main Thesis | Digital Forensic | UGT CCIT BSCS-DF .A66 2016 (Browse shelf(Opens below)) | c.1 | Available | UGTHE000001452 |
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Includes bibliographical references.
List of figures -- List of tables -- 1. Introduction -- 2. Review of related literature -- 3. Theoretical background -- 4. Proposed solution to the problem -- 5. Analysis -- 6. Evaluation and discussion -- 7. Conclusions and recommendations -- 8. Recommendation for digital forensic work -- 9. References -- 10. Acknowledgement -- 11. Appendix: Tables -- 12. Appendix: Personal information.
This study details the analysis of a set of tweets collected during the 2013 Philippine elections through topic modeling. In order to create a more comprehensive data set, the URLs found in Twitter data are also mined for additional content.
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