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Official websites use. Share sensitive information only on official, secure websites. Corresponding author. The dataset presented in this paper consists of sentiment information extracted from image and text data of financial subreddit posts. Members of these subreddits post about their trading behavior, express their opinions, and discuss capital market trends. Their posts contain sentiment information on financial topics as well as signaling information on trading decisions.
Frequently, members post screenshots of their portfolios from their mobile broker apps. We collected the posts, processed them to extract sentiment scores using various methods, and anonymized them. The dataset consists therefore not of any content from the posts or information about the author, but the processed sentiment information within the post. Further financial tickers mentioned in the posts are tracked, such that the effect of sentiment in the posts can be attributed to financial products and used in the context of financial forecasting.
A fine-tuned MobileNets artificial neural network [4] was used to classify images into four distinct categories, which had been determined in a preliminary analysis. The categories included classical memes, number posts e. The reason for the classification of images into the four categories is that the images are so inherently different, that different extraction methods had to be applied for each category.
OCR β methods [5] were used to extract text from images. Custom methods were applied to extract sentiment and other information from the resulting text. The data [1] is available on a minute basis and can be used in many areas, such as financial forecasting and analyzing sentiment dynamics in social media posts.
The data provides quantitative sentiment extracted from text and images on finance related social media posts on reddit. The data can be aggregated on a minute, hourly or daily basis and be used in time series analyses.