scholarly journals A Proposed Model for Stock Price Prediction Based on Financial News

2019 ◽  
Author(s):  
Mubarek Selimi ◽  
Adrian Besimi
2021 ◽  
Author(s):  
Alexandre Heiden ◽  
Rafael Stubs Parpinelli

Financial news has been proven to be valuable source of information for the evaluation of stock market volatility. Most of the attention has been given to social media platforms, while news from vehicles such as newspapers are not as widely explored. Newspapers provide, although in a smaller volume, more reliable information than social media platforms. In this context, this research aims to examine the influence of financial news within the stock price prediction problem, by using the VADER sentiment analysis model to process the news and feed the sentiments as a feature into a LSTM-based stock price prediction model, along with the historical data of the assets. Experiments indicate that the model has better results when the news’ sentiments are considered, and the model demonstrates potential to accurately predict stock prices up to around 60 days into the future.


2021 ◽  
Vol 4 (1) ◽  
pp. 13 ◽  
Author(s):  
Mukul Jaggi ◽  
Priyanka Mandal ◽  
Shreya Narang ◽  
Usman Naseem ◽  
Matloob Khushi

Stock price prediction can be made more efficient by considering the price fluctuations and understanding people’s sentiments. A limited number of models understand financial jargon or have labelled datasets concerning stock price change. To overcome this challenge, we introduced FinALBERT, an ALBERT based model trained to handle financial domain text classification tasks by labelling Stocktwits text data based on stock price change. We collected Stocktwits data for over ten years for 25 different companies, including the major five FAANG (Facebook, Amazon, Apple, Netflix, Google). These datasets were labelled with three labelling techniques based on stock price changes. Our proposed model FinALBERT is fine-tuned with these labels to achieve optimal results. We experimented with the labelled dataset by training it on traditional machine learning, BERT, and FinBERT models, which helped us understand how these labels behaved with different model architectures. Our labelling method’s competitive advantage is that it can help analyse the historical data effectively, and the mathematical function can be easily customised to predict stock movement.


Author(s):  
Manavi Mishra ◽  
Manjushree Patil ◽  
Geetanjali Raut ◽  
Tushar Chaudhari

Stock returns are very fluctuating in nature. They rely upon various factors like previous stock prices, current market trends, financial news, etc. To feature their annual income, people have now started watching stock investments as a remunerative option. There are many tools available to investors using technical analysis to form decisions. With expert guidance and intelligent planning, we will almost double our annual income through stock returns. These days, social media has become a mirror. It reflects people’s thoughts and opinions on any particular event or news. Sentiments of the general public associated with an organization can have an upshot on its stock prices. This paper surveys various machine learning techniques and algorithms employed to boost the accuracy of stock price prediction.


Computer ◽  
2010 ◽  
Vol 43 (1) ◽  
pp. 51-56 ◽  
Author(s):  
Robert P. Schumaker ◽  
Hsinchun Chen

2012 ◽  
Vol 157-158 ◽  
pp. 1586-1590
Author(s):  
Shu Yan Dai ◽  
Ning Li

Many technical analysis use financial indices to predict stock price changes. In this paper, we present a different approach for prediction stock price fluctuations using financial news. Our method approaches the stock price prediction problem from an information retrieval perspective. We apply both text analysis and pattern classification techniques to search for important online news that are relevant for stock price changes. First, the online financial news and the corresponding stocks are extracted. Then we apply Support Vector Machine (SVM) to construct a model that predicts the price changes for the stocks. Finally, the stock changes prediction model is used to classify and extract upcoming important financial news. The experimental results demonstrate our method is effective for seeking the important financial news for stock price changes.


2021 ◽  
Vol 17 (2) ◽  
pp. 72-95
Author(s):  
Justice Kwame Appati ◽  
Ismail Wafaa Denwar ◽  
Ebenezer Owusu ◽  
Michael Agbo Tettey Soli

This study proposes a deep learning approach for stock price prediction by bridging the long short-term memory with gated recurrent unit. In its evaluation, the mean absolute error and mean square error were used. The model proposed is an extension of the study of Hossain et al. established in 2018 with an MSE of 0.00098 as its lowest error. The current proposed model is a mix of the bidirectional LSTM and bidirectional GRU resulting in 0.00000008 MSE as the lowest error recorded. The LSTM model recorded 0.00000025 MSE, the GRU model recorded 0.00000077 MSE, and the LSTM + GRU model recorded 0.00000023 MSE. Other combinations of the existing models such as the bi-directional LSTM model recorded 0.00000019 MSE, bi-directional GRU recorded 0.00000011 MSE, bidirectional LSTM + GRU recorded 0.00000027 MSE, LSTM and bi-directional GRU recorded 0.00000020 MSE.


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