Web Browser-Based Forecasting of Economic Time-Series
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Abstract |
This paper presents the implementation of a time series forecasting algorithm, jsEvRBF, that uses genetic algorithm and neural nets in a way that can be run in must modern web browsers. Using browsers to run forecasting algorithms is a challenge, since language support and performance varies across implementations of the JavaScript virtual machine and vendor. However, their use will provide a boost in the number of platforms available for scientists. jsEvRBF is written in JavaScript, so that it can be easily delivered to and executed by any device containing a web-browser just accessing an URL. The experiments show the results yielded by the algorithm over a data set related to currencies exchange. Best results achieved can be effectively compared against previous results in literature, though robustness of the new algorithm has to be improved. |
Year of Publication |
2016
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Publisher |
Springer International Publishing
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Conference Location |
Cham
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ISBN Number |
978-3-319-40111-9
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Download citation | |
Number of Pages |
35-42
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