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

09/11/2017
by   Zheqing Zhu, et al.
0

In this paper, we propose a modified Levy jump diffusion model with market sentiment memory for stock prices, where the market sentiment comes from data mining implementation using Tweets on Twitter. We take the market sentiment process, which has memory, as the signal of Levy jumps in the stock price. An online learning and optimization algorithm with the Unscented Kalman filter (UKF) is then proposed to learn the memory and to predict possible price jumps. Experiments show that the algorithm provides a relatively good performance in identifying asset return trends.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/30/2023

Taureau: A Stock Market Movement Inference Framework Based on Twitter Sentiment Analysis

With the advent of fast-paced information dissemination and retrieval, i...
research
02/14/2023

The Impact of Twitter Sentiments on Stock Market Trends

The Web is a vast virtual space where people can share their opinions, i...
research
08/06/2017

Machine learning in sentiment reconstruction of the simulated stock market

In this paper we continue the study of the simulated stock market framew...
research
11/07/2018

Using Stock Prices as Ground Truth in Sentiment Analysis to Generate Profitable Trading Signals

The increasing availability of "big" (large volume) social media data ha...
research
08/17/2020

Stock Index Prediction with Multi-task Learning and Word Polarity Over Time

Sentiment-based stock prediction systems aim to explore sentiment or eve...
research
06/22/2022

AlphaMLDigger: A Novel Machine Learning Solution to Explore Excess Return on Investment

How to quickly and automatically mine effective information and serve in...
research
03/10/2022

Fusion of Sentiment and Asset Price Predictions for Portfolio Optimization

The fusion of public sentiment data in the form of text with stock price...

Please sign up or login with your details

Forgot password? Click here to reset