Desarrolló un algoritmo predictivo de la tendencia del bitcoin, con visualización de resultados en una aplicación web con información basada en análisis históricos del bitcoin, esto con el fin de dar solución a una problemática al momento de comerciar con el bitcoin, dicha problemática consiste en que las personas que comercian con esta criptomoneda toman decisiones por emoción, dando como resultado perdidas al momento de comerciar con el bitcoin.
In this work, a predictive algorithm of the Bitcoin trend was developed, with
visualization of results in a web application with information based on historical analysis of
Bitcoin, this to solve a problem when trading with Bitcoin, this problem is that people who trade
with this cryptocurrency make decisions by emotion, resulting in losses when trading with
Bitcoin.
The research methodology used was quantitative since it was used to make a predictive
technical analysis of Bitcoin historical data with a Machine Learning model developed in the
Python programming language.
The development methodology used for the realization of the project was the XP
methodology (Extreme Programming), since it offered us tools that allowed us to give
continuous improvement to the software, giving the possibility of teamwork between two or
more developers to make the software code universal. Also, to have within the scheme defined
roles such as: testers, tracker, coach, and programmers which allow us to give an agile response
to the operation of the software.
We seek to have a predictive model with a high percentage of assertiveness in the
prediction of how likely it is that the value of Bitcoin will go down or up in real time in the
market of the cryptocurrency trading platform coinbase.com, to show the results in a free web
application for the public.