The StarMine MarketPsych Media Sentiment Model (MMS) marks the first StarMine equity returns model based on news and social media sentiment. MMS shows significant top-bottom decile spreads as well as low correlations to traditional equity and StarMine factors.
The StarMine MarketPsych Media Sentiment (MMS) model is a stock ranking system that provides a 1 to 100 daily percentile ranking for over 16,000 global stocks. MMS complements the StarMine suite of equity models and follows a similar methodology in research and implementation. The model is derived from LSEG MarketPsych Analytics, a market leader in financial media sentiment data. The output includes an overall score, as well as specific Equity, Business and Management scores.
The MMS scores are designed to forecast the next month’s relative share price returns, with higher ranked stocks outperforming lower. Historical evaluation demonstrates significant outperformance of higher deciles versus lower ones, with the top-bottom decile spread for global stocks averaging 10.4% annually from 2006 to October 2020, including 12.3% in the out-of-sample period. The MMS scores are uncorrelated with traditional market factors and complement fundamental models.
MarketPsych Analytics from LSEG
The LSEG MarketPsych Analytics (LMA) are a market leader in aggregated financial media sentiment. The LSEG MarketPsych Analytics provide sentiment and thematic scores for 16,000+ global companies, as well as stock indexes, commodities, currencies, sovereign bonds, countries and cryptocurrencies. The LSEG MarketPsych Analytics represent aggregate scores from 2 million financial articles per day, ingested in real-time from thousands of news feeds, blogs and comments. The LSEG MarketPsych Analytics contain granular sentiments with coverage including fundamental, earnings, analyst, management, and price sentiment scores. For equities, the LSEG MarketPsych Analytics deliver 34 distinct sentiment scores including emotions such as fear, trust, and surprise as well as themes such as earnings forecast, price forecast, fundamental strength, company innovation, and management change.
Backed by External Research
Both academic and industry research on non-random share price behavior emphasises two information-related patterns: overreaction (mean-reversion) and underreaction (trending). The terms under- and overreaction refer not only to the price movement, but also to investors’ reactions to company-relevant news. The type of reaction occurring depends on news topic; earnings, management, and mergers-related news each produce different price effects. Characteristics of the news, such as media sentiment, audience, vividness, visibility, and anticipation, each can modulate the impact.