A Literature Review on Deep Learning in Finance | AISC

Published on ● Video Link: https://www.youtube.com/watch?v=mcFmx9SO3r8



Category:
Review
Duration: 45:22
742 views
16


For slides and more information on the paper, visit https://ai.science/e/a-literature-review-on-machine-learning-in-finance--PJBMDdnbGrHr0bJA2bei

Speaker: Prasad Seemakurthi; Moderator: Suhas Pai

Link to the survey paper: https://arxiv.org/abs/2002.05786

Abstract

Computational intelligence in finance has been a very popular topic for both academia and financial industry in the last few decades. Numerous studies have been published resulting in various models. Meanwhile, within the Machine Learning (ML) field, Deep Learning (DL) started getting a lot of attention recently, mostly due to its outperformance over the classical models. Lots of different implementations of DL exist today, and the broad interest is continuing. Finance is one particular area where DL models started getting traction, however, the playfield is wide open, a lot of research opportunities still exist. In this paper, we tried to provide a state-of-the-art snapshot of the developed DL models for financial applications, as of today. We not only categorized the works according to their intended subfield in finance but also analyzed them based on their DL models. In addition, we also aimed at identifying possible future implementations and highlighted the pathway for the ongoing research within the field.




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