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CONCLUSION

In document May 15th, 2019 Mathias Pagh Jensen (Sider 80-90)

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On the basis of the above, I suggest further investigation on the area which takes into account a shorter time-frequency, for instance, hourly. Not only that, but I suggest further research on the field of natural language processing, too. Such research should strive to optimize the sentiment scoring algorithm. The above considerations can help uncover answers to the research question beyond the indicative.

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