Publication: Micro-text classification between small and big data
Micro-text classification between small and big data
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Christen, M., Niederberger, T., Ott, T., Aryobsei, S., & Hofstetter, R. (2015). Micro-text classification between small and big data. Nonlinear Theory and Its Applications, 6(4), 556–569. https://doi.org/10.1587/nolta.6.556
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Micro-texts emerging from social media platforms have become an important source for research. Automatized classification and interpretation of such micro-texts is challenging. The problem is exaggerated if the number of texts is at a medium level, making it too small for effective machine learning, but too big to be efficiently analyzed solely by humans. We present a semi-supervised learning system for micro-text classification that combines machine learning techniques with the unmatched human ability for making demanding, i.e. nonli
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Christen, M., Niederberger, T., Ott, T., Aryobsei, S., & Hofstetter, R. (2015). Micro-text classification between small and big data. Nonlinear Theory and Its Applications, 6(4), 556–569. https://doi.org/10.1587/nolta.6.556