Part 17: Sentiment AnalysisInternational audienceSentiment analysis involving the identification of sentiment polarities from textual data is a very popular area of research. Many research works that have explored and extracted sentiments from textual data such as financial news have been able to do so by employing Bidirectional Encoder Representations from Transformers (BERT) based algorithms in applications with high computational needs, and also by manually labelling sample data with help from financial experts. We propose an approach which makes possible the development of quality Natural Language Processing (NLP) models without the need for high computing power, or for inputs from financial experts on labelling focused dataset for NLP ...
International audienceGiven a corpus of financial news labelled according to the market reaction fol...
Business and financial news bring us the latest information about the stock market. Studies have sho...
Financial data in banks are unstructured and complicated. It is challenging to analyze these texts m...
Sentiment analysis involving the identification of sentiment polarities from textual data is a very ...
For as long as the stock market, financial news, and financial reports have been around, people have...
This thesis aims to examine the use of financial sentiment analysis for quarterly reports published ...
The frequent ups and downs are characteristic of the stock market. The conventional predictive model...
This paper describes a rule-based sentiment analysis algorithm for polarity classification of financ...
Research in financial domain has shown that sentiment aspects of stock news have a profound impact o...
Today we seldom suffer from lack of information; on the contrary, we often suffer from too much info...
BERT (Bidirectional Encoder Representations from Transformers) is one of the most popular models in ...
Using sentiment information in the analysis of financial markets has attracted much attention. Natur...
Stock prediction based on NLP sentiment analysis is one of the most researched topics due to the rev...
The increasing amount of sentiments disseminated by traditional and social media and their impact on...
Sentiment analysis of news headlines is an important factor that investors consider when making inve...
International audienceGiven a corpus of financial news labelled according to the market reaction fol...
Business and financial news bring us the latest information about the stock market. Studies have sho...
Financial data in banks are unstructured and complicated. It is challenging to analyze these texts m...
Sentiment analysis involving the identification of sentiment polarities from textual data is a very ...
For as long as the stock market, financial news, and financial reports have been around, people have...
This thesis aims to examine the use of financial sentiment analysis for quarterly reports published ...
The frequent ups and downs are characteristic of the stock market. The conventional predictive model...
This paper describes a rule-based sentiment analysis algorithm for polarity classification of financ...
Research in financial domain has shown that sentiment aspects of stock news have a profound impact o...
Today we seldom suffer from lack of information; on the contrary, we often suffer from too much info...
BERT (Bidirectional Encoder Representations from Transformers) is one of the most popular models in ...
Using sentiment information in the analysis of financial markets has attracted much attention. Natur...
Stock prediction based on NLP sentiment analysis is one of the most researched topics due to the rev...
The increasing amount of sentiments disseminated by traditional and social media and their impact on...
Sentiment analysis of news headlines is an important factor that investors consider when making inve...
International audienceGiven a corpus of financial news labelled according to the market reaction fol...
Business and financial news bring us the latest information about the stock market. Studies have sho...
Financial data in banks are unstructured and complicated. It is challenging to analyze these texts m...