Traditional investment research uses fundamental analysis, historical trends, and financial statements. However, big data is augmenting standard financial models’ capabilities. Related software tools let investors and portfolio management veterans access huge volumes of information. As a result, they can seamlessly capture more profound insights for accurate return on investment (ROI) estimations. This post will discuss how to use big data in investment research effectively to gain a competitive advantage.
Big data is characterized by its four V’s, namely volume, velocity, variety, and veracity. Besides, it necessitates adequate data lake creation if you want to expand your investment research scope. In the hands of professional analysts and fund managers, big data facilitates excellent risk management. Its integration allows strategic decisions aimed at improving portfolio performance to the max.
Understanding Big Data in Investment Research
Big data comprises large and complex datasets that cannot be processed by traditional data management programs and methods. In the context of investment research services, it encompasses a wide range of financial data sources and market details comprising structured as well as unstructured data assets.
The former consists of financial statements, market prices, and economic indicators. Since they are numerical and easy to tabulate, computers can handle structured data objects using standard calculation and sorting methods.
On the other hand, unstructured data assets comprise news articles, social media posts, earnings call transcripts, and web traffic. Similarly, alternative data involves satellite imagery, geolocation data, consumer transaction data, and sentiment analysis.
The combination of structured, unstructured, and alternative data resides in data lakes or warehouses. Moreover, an extract-load-transform (ETL) pipeline developed and maintained by data engineers streamlines interactivity for analysts or data scientists. In finance, the stakeholders can leverage varied sources of data to enable investors to discover reliable market correlations or trends.
Where Can You Use Big Data Insights in Investment Research?
- Improving Market Analysis
Fund managers and accredited investors will likely seek a more comprehensive view of market dynamics. Real-time monitoring of market sentiments with the help of big data analytics consulting will surely aid them in studying how market participants behave and how macroeconomic factors fluctuate.
Sentiment analysis refers to unstructured data processing that utilizes descriptive, mixed media assets from social networking sites (SNS) and news portals. Therefore, it can offer insights into stakeholder confidence levels. Financial advisors and their clients can later switch their buy-hold-sell calls based on identified shifts in investor behavior, impacting stocks and mutual funds.
Consider web traffic and search trends. Big data analysts can use them to indicate consumer interest in specific products or companies. Doing so helps predict stock performance. On the one hand, more searches of a brand or product on the web could imply increasing consumer demand. On the other hand, an unnatural spike in online traffic, social engagement, and search volume might hint at viral marketing successes or controversial media coverage risks.
- Discovery of Investment Opportunities
Big data gives investment decision-makers the ability to discover new investment opportunities that would otherwise not be easily identified by traditional market research methods. For illustration, satellite images of retail parking lots can offer real-time insights into consumer activity. Investors can explore whether a retail brand’s claims of booming demand and popularity have any merits.
In an economic zone, geolocation data will indicate foot traffic trends. Moreover, satellite imagery, road traffic statistics, and car dealership website analyses can help foresee the potential of the automobile industry growth in that economic region.
Using such data in conjunction with traditional financial analysis will allow the investor to identify undervalued assets. In other words, they will be onto unique, emerging trends in the market to reap the rewards of being an early mover.
- Advancing Risk Management
In investing, proper risk management can make all the difference between the above-market yields and dramatic financial disasters. Consequently, big data insights enable better feasibility assessments. They also equip decision-makers with practical risk mitigation tactics.
Predictive analytics deserve due recognition as it can identify potential market downturns. To do this, analyzing historical data and developing clever machine learning (ML) models is a must. After all, those ML tools will assist in forecasting future trends.
Furthermore, geopolitical events, such as new government formation or prolonged social unrest, need to be studied. Otherwise, investors might misjudge market sentiments and immaturely support brands operating in unstable socioeconomic policy environments. Let machine learning algorithms detect anomalies and potential risks in financial data. Accordingly, financial advisors and market researchers can optimize their reports and encourage proactive decision-making.
You want real-time data insights when an infection outbreak weakens an economy or governments make extreme changes to policies in a brief period. In this regard, big data offers the best ways to find ideas and navigate market volatility via strategy optimizations.
- Portfolio Management Enhancements
Big data in investment research lets investors use and benefit from modern portfolio management automation opportunities. They can, therefore, swiftly gain outcome-linked insights into asset allocation, diversification, and market performance monitoring.
First, factor analytics will identify the key drivers of portfolio performance. Later, decision-makers can optimize asset allocation as necessary. An artificial intelligence system can also help investors examine how portfolios can be diversified. It can streamline correlation determination and validation, which identifies asset groupings that might have low or negative yields.
In this way, portfolio managers can plan more robust and high-performance investment portfolios by using big data analytics. As the ML and AI tech mature, the digitalization costs will decline. Soon, automated market forecasting platforms will have more enthusiasts to satisfy.
Conclusion
Stakeholders studying, regulating, or participating in financial markets cannot neglect the use of big data in upgrading investment research practices. They seek risk management approaches that work in the real world and enhance portfolio performance optimization. That is why leveraging advanced data analytics tools and integrating diverse data sources is indispensable.
However, alternative data involves qualitative insight extraction, and the scope of data sourcing keeps widening. Without data lakes, secure ETL pipelines, and big data insights, investors will struggle to unlock the actual potential of alternative data for market predictions. Thankfully, stakeholders have been experimenting with big data use cases, inspecting how to gain a competitive edge in the market using them.
Although there are noteworthy issues related to data quality, privacy, and sustainable integration, responsibly harnessing the power of big data will enhance all investors’ returns. With the right strategies and technologies, big data can become a powerful asset in empowering institutional and non-institutional investors to make strategic investment decisions to prosper.