Will AI Sentiment Analysis Be the Next Online Trading Tool for Risk-averse Investors?

Written by juliazhu | Published 2024/02/07
Tech Story Tags: artificial-intelligence | ai-applications | future-of-ai | sentiment-analysis | trading | ai-sentiment-analysis | ai-driven-sentiment-analysis | investing-sentiment-analysis

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The 2023 year kicked off with a taste of volatility. After starting on a potentially optimistic note, the market is showcasing fluctuations caused by inflation fears, so leveraging data to manage risk remains a priority. Investors have long relied on traditional financial data and market research to make decisions, but as financial markets become increasingly volatile, these sources of information are proving insufficient. Amidst this complexity, AI sentiment analysis is emerging as a tool touted to offer unprecedented insights and potentially redefine traditional investment practices.

AI detecting shifts in sentiment could potentially provide investors with a significant edge. But, like all powerful tools, AI sentiment analysis also has limitations. The effectiveness of the technology relies on the quality of the data it examines. False information or 'noise' on social media can skew results. Also, defining and identifying 'sentiment' is a complex task—even for AI software.

As we ride the cusp of this revolution, one question arises — Will AI-driven sentiment analysis be the future tool for risk-averse investors? The field is ripe for exploration and development. As technology advances, we will likely see an evolving role for AI sentiment analysis within the financial markets.

The Influence of Sentiment Analysis on Investment Choices

The current economic hardships are not unprecedented, and there’s a lot we can learn from the previous ones. The 2008 financial crash demonstrated how traditional analytical methods were ill-equipped to foresee future economic upheaval. Back then, conventional analytical tools relied heavily on historical data, financial ratios, and macroeconomic indicators. However, they missed a crucial dimension: the capability to tap into the collective emotional undercurrent of the market. This gap meant decision-makers were caught off guard by the growing negative sentiments that brewed beneath the surface, ultimately leading to the catastrophic collapse.

As of 2023, this need to bolster our risk-assessment infrastructure prompted an interest in sentiment analysis – attempting to glean insights from public opinion, as reflected in content across various media.

There’s a correlation between investor sentiment and financial market volatility, placing sentiment analysis at the core of investment strategies. Indeed, there is a link between sentiment and market performance, for instance:

  • A common tendency emerges when investor sentiment is categorized according to different topics: it often exhibits a positive correlation with the excess return rate. The Inland Norway University of Applied Sciences proved this.
  • Different topics have varying degrees of impact.
  • Investor sentiment has an asymmetric impact on excess returns.

Sentiment analysis's potential to gauge market trends and sentiments can be demonstrated through recent events like the GameStop short squeeze and the cryptocurrency craze that took over Reddit. The surge in GameStop's stock price in early 2021, driven largely by traders organizing themselves on the subreddit r/wallstreetbets, exemplifies how sentiment analysis can reveal market-shifting trends.

The popularity of cryptocurrencies also significantly increased on Reddit, noticeably on r/CryptoCurrency and r/bitcoin. These sentiment shifts had real-world implications. During this period, the price of cryptocurrencies such as Bitcoin and Ethereum experienced a surge, partially due to the heightened investor sentiment displayed on these platforms. The surge in discussions and collective bullish sentiment on Reddit could be analyzed in real-time, revealing a potential market movement before it was reported by mainstream financial news.

Investors and data analysts using AI-based sentiment analysis tools were able to observe the rising positive sentiment towards GameStop shares. An AI-powered sentiment analysis tool would’ve detected an increased volume of posts, comments, and positive sentiment around particular cryptocurrencies.

By monitoring the sentiment on platforms like Reddit, investors can gain an invaluable window into retail investor sentiment. AI-driven sentiment analysis provides the tools needed to parse through the enormous volume of posts and comments, sorting them for content and analyzing their sentiment, whether positive, neutral, or negative. This empowerment to detect mass sentiment shifts early enough can prove exceedingly beneficial, especially during volatile market conditions.

How AI Sentiment Analysis Uses NLP for Revealing Hidden Patterns

Sentiment analysis utilizes Natural Language Processing (NLP), text analysis methods, and computational linguistics to detect, extract, and measure subjective information from source materials. Using NLP techniques, sentiment analysis pre-processes texts for analysis by eliminating irrelevant information and breaking the texts down into smaller, manageable tokens. These tokens, then, are classified into sentiments, thereby defining the overall sentiment of the text. The key objective is to discern the underlying sentiment—positive, negative, or neutral—expressed in a series of words. When combined with NLP, AI transforms the way machines comprehend and engage with human language.

AI helps NLP algorithms grasp the meaning, context, and sentiment behind complex and unstructured text data. AI sentiment analysis models are capable of comprehending the context and nuances of language. They can pick up on nuances, irony, sarcasm, and other complex aspects of language that could change the entire sentiment behind a statement. Brand mentions, product reviews, online feedback - AI can analyze all these and more to provide valuable insights about public sentiment.

Let's take a look at an example:

"We stopped off at Cafe X last week. Their coffee was impeccable, but the muffins were rather disappointing."

The next stage involves fusing these words into grammatical structures and assigning semantic attributes to these structures. In this situation, "impeccable" delivers a positive sentiment regarding the coffee, while "rather disappointing" imparts a negative sentiment toward the muffins. Each semantic function, including the Participant ("We"), Activity ("stopped off"), Entity ("Cafe X"), Item 1 ("coffee"), Sentiment 1 ("impeccable"), Item 2 ("muffins"), and Sentiment 2 ("rather disappointing"), is pulled out and evaluated.

This helps decode what people say about specific products or services, enabling brands and decision-makers to gain enhanced understanding and make strategic decisions. To enhance the accuracy of its output, sentimental analysis models are trained with large datasets, allowing them to better understand and predict sentiments based on the association between words and their sentiments. An essential element in this process is contextual understanding, which helps depict the varying sentiments of words when used in different settings or contexts.

Delving into the context of verbal expressions, then, it analyzes the context of those words to determine how they could affect an investor’s strategy in the short term. For example, suppose there are predominantly negative and several positive articles about the same stock. In that case, it might interest long-term investors who want to get in at a lower price before there’s more growth ahead for the stock price.

An instance of this, a research paper featured in the Australasian Accounting, Business, and Finance Journal delved into the connection between the tweet activity of Tesla CEO Elon Musk and the fluctuations in Tesla's stock price. The purpose of the research was to determine if Musk's tweets noticeably influenced the stock price of Tesla. Through the use of machine learning with Python and Scikit-Learn, the authors classified Musk's tweets into sentiment categories. Curiously, on April Fool's Day, Elon Musk took to Twitter with a tongue-in-cheek assertion that Tesla had hit financial rocks by going bankrupt. But this seemingly innocuous tweet packed a punch, leading to a substantial 7% dip in Tesla's stock value.

Considering Musk's propensity to share opinions and updates about Tesla on Twitter, his tweet activity has the potential to sway market sentiment, both positively and negatively. Therefore, the study's results could provide valuable insights into the power of high-profile individual's influence on market dynamics. However, it may underscore the importance of sentiment analysis for spotting trends in real time and understanding the significance of influential voices in the market. Investors and analysts can leverage these insights to adapt their strategies and seize opportunities arising from shifts in public sentiment, especially in today's world where social media plays a crucial role in shaping opinions and decision-making.

Is It Effective?

Some experts say AI sentiment analysis works well enough to predict short-term movements in stock prices, but they're skeptical about its long-term accuracy and effectiveness. Others seem more optimistic about its potential benefits, claiming that sentiment analysis can help investors find hidden opportunities in their portfolios.

Various resources claim that sentiment scores generated by AI algorithms were only 60-70% accurate at best — meaning they were right just three out of every five times. Misleading information, fake news, and spam distort results, challenging reliable insights. Moreover, human language complexities, including sarcasm and nuanced emotions, can hinder accurate interpretation and need advanced AI models to detect and interpret them.

In reality, even while it's not 100% accurate all the time, the insights it brings can still be valuable. Another research study conducted at Stanford University states that by analyzing Twitter data with sentiment analysis and machine learning, it's possible to predict stock market movements with a 75.56% accuracy using a Self Organizing Fuzzy Neural Network (SOFNN) and formulate a basic portfolio management strategy based on the results.

Sentiment analysis adds a new layer of intelligence to investment strategies, making them more empathetic and responsive to shifts in the public opinion landscape. Leveraging cutting-edge methodologies such as Big Data analytics, Machine Learning, and Natural Language Processing (NLP), specialists can produce optimized and cost-effective applications suitable for diverse organizational purposes. An example of how impactful sentiment analysis can be is seen in Cognovi Labs' Twitris tool.

Twitris could predict Brexit hours before the polls by analyzing real-time sentiment expressed over Twitter. By understanding context, even inclusive of slang, Twitris could detect the underlying sentiment of tweets to predict a significant political event.

This example demonstrates the power and potential of machine learning and NLP in analyzing social media chatter and predicting market and socio-political trends. As these technologies evolve, the fintech industry stands to gain even more valuable, real-time insights - ultimately leading to more informed and potentially successful investment decisions.

In a nutshell, if you go for AI when managing sentiment analysis, you’re on the right track, provided you combine tech expertise with industry-specific sensitivities and expertise. The importance of this advanced technology extends past the simple interpretation of customer emotions. AI sentiment analysis equips businesses, particularly startups, with a competitive advantage in the ever-evolving market landscape. Whether or not any out-of-the-box solutions emerge in the coming years for particular industries is entirely up to the demand and supply laws, and they will likely be there before 2027.



Written by juliazhu | Leading content at @ElifTech. I regret nothing you see in this feed.
Published by HackerNoon on 2024/02/07