National Repository of Grey Literature 2 records found  Search took 0.01 seconds. 
Predicting stock price movements from financial news using deep neural networks
Kramoliš, Richard ; Baruník, Jozef (advisor) ; Vácha, Lukáš (referee)
Financial media are an important source of information and many articles about companies and stocks are released every day. This thesis assesses the informa- tion value of the articles and utilizes these articles for the stock price move- ment prediction task. For this purpose, models with transformer architecture are used, specifically Bidirectional Encoder Representations from Transform- ers. These models are able to process the text data and create the contextual representation of the text sequence. After adding the classification layer, the models are applied for the stock price movement predictions. The thesis evalu- ates multiple models including different techniques and parameters to find the best performing model. It focuses on two data filters that are expected to de- crease the noise in the data. Moreover, it introduces a new method to recognize the company of interest. As a result of the hyperparameter optimization, the final model is constructed. JEL Classification C45, C51, C52, C53, G11, G14, G17 Keywords BERT, Transformer, Financial Articles, Stock Trading Title Predicting stock price movements from financial news using deep neural networks
Performance analysis of non-financial companies within the business cycle
Kramoliš, Richard ; Pošta, Vít (advisor) ; Nečadová, Marta (referee)
This bachelor s thesis deals with analysis of the relationship between performance of non-financial companies and macroeconomic factors. There will be presented several important factors and the aim is to find factors that significantly influence the performance of non-financial companies. The theoretical part of this paper will outline how macroeconomic factors can affect non-financial companies. In the next part, these hypotheses will be examined. The basic method used for this analysis will be regression analysis. Due to the regression analysis, it will be possible to determine which factors influence performance.

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4 Kramoliš, Robert
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