Machine learning in sentiment reconstruction of the simulated stock market

08/06/2017
by   Mikhail Goykhman, et al.
0

In this paper we continue the study of the simulated stock market framework defined by the driving sentiment processes. We focus on the market environment driven by the buy/sell trading sentiment process of the Markov chain type. We apply the methodology of the Hidden Markov Models and the Recurrent Neural Networks to reconstruct the transition probabilities matrix of the Markov sentiment process and recover the underlying sentiment states from the observed stock price behavior.

READ FULL TEXT
research
04/20/2021

Stock Market Trend Analysis Using Hidden Markov Model and Long Short Term Memory

This paper intends to apply the Hidden Markov Model into stock market an...
research
09/11/2017

A Modified Levy Jump-Diffusion Model Based on Market Sentiment Memory for Online Jump Prediction

In this paper, we propose a modified Levy jump diffusion model with mark...
research
03/13/2019

Market Trend Prediction using Sentiment Analysis: Lessons Learned and Paths Forward

Financial market forecasting is one of the most attractive practical app...
research
05/24/2021

Can we imitate stock price behavior to reinforcement learn option price?

This paper presents a framework of imitating the price behavior of the u...
research
01/16/2018

Social Network based Short-Term Stock Trading System

This paper proposes a novel adaptive algorithm for the automated short-t...
research
04/19/2021

Applying Convolutional Neural Networks for Stock Market Trends Identification

In this paper we apply a specific type ANNs - convolutional neural netwo...
research
09/02/2018

Enhancing Stock Market Prediction with Extended Coupled Hidden Markov Model over Multi-Sourced Data

Traditional stock market prediction methods commonly only utilize the hi...

Please sign up or login with your details

Forgot password? Click here to reset