The Missing Link â•fi Predictive Models based on Textual and Dynamic Network Data

نویسنده

  • Kai Heinrich
چکیده

The paper addresses the issue of including textual and network information into predictive mod-elling. Related work suggest models for both analytic fields separately. Considering a “Big Data World” where unstructured information and the often times neglected network information, both pose analytic challenges we aim at integrating both in a predictive model. While the model states a general approach the paper focuses on evaluation in the well-known stock market pre-diction challenge in order to make the research more comparable to related scientific work.

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تاریخ انتشار 2016