National Repository of Grey Literature 2 records found  Search took 0.00 seconds. 
Vliv sentimentu na vývoj ceny Bitcoinu
Bohuslav, Tomáš
The bachelor's thesis is about the influence between the price of Bitcoin and market sentiment. This connection is looked at during recurring cycles for Bitcoin, which are started in July 2010. Clarification of the influence of sentiment is also carried out during periods of significant economic events (the period of the covid-19 pandemic and the Russian invasion of Ukraine). The thesis discusses the specifics of the bitcoin market, basic information for understanding its functioning, and the psychology of investors. The relationship between sentiment and Bitcoin price is then tested using correlation analysis. A recommendation for including Bitcoin in the investment portfolio is also formulated. Based on the results of this work a price increase is expected in the medium-term investment horizon.
Using the log-periodic power-law model to detect bubbles in stock market
Kožuch, Samuel Maroš ; Krištoufek, Ladislav (advisor) ; Nevrla, Matěj (referee)
Stock market crashes were considered as an chaotic even for a long time. However, more than a decade ago a specific behavior was observed, which accompanied most of the crashes: an accelerating growth of price and log-periodic oscillations. The log-periodic power law was found to have an ability to capture the behavior prior to crash and even predict the most probable time of the crash. The log-periodic power law requires a complicated fitting method to find the estimated values of its seven parameters. In the thesis, an alternative simpler fitting method is proposed, which is equally likely to find the true estimates of parameters, thus generating an equally good fit of log-periodic power law. Furthermore, four stock indices are fitted to log-periodic power law and examined for possible log-periodic oscillations in different time periods, including a very recent period of 2017. In all of the analyzed indices, a log-periodic oscillations could be observed. One index, analyzed in past period, was fitted to log-periodic power law, which was able to capture the oscillations and predict the critical time of crash. In the rest of the selected stocks, which were analyzed in a recent period, the critical time was estimated with varying results.

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