Literature Review and Preliminaries

This chapter reviews the text mining approaches employed and the problem formalization of stock market prediction by previous studies. A fine-grained categorization of text source is provided. The basic concepts and preliminaries of asset returns and portfolio optimization techniques are given in this chapter as well. The Markowitz model and the Black-Litterman model are the roots that connect financial variables with semantic modeling and sentiment analysis.

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