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Uncovering Representation Bias for Investment Decisions in Open-Source Large Language Models

Uncovering Representation Bias for Investment Decisions in Open-Source Large Language Models ArXiv ID: 2510.05702 “View on arXiv” Authors: Fabrizio Dimino, Krati Saxena, Bhaskarjit Sarmah, Stefano Pasquali Abstract Large Language Models are increasingly adopted in financial applications to support investment workflows. However, prior studies have seldom examined how these models reflect biases related to firm size, sector, or financial characteristics, which can significantly impact decision-making. This paper addresses this gap by focusing on representation bias in open-source Qwen models. We propose a balanced round-robin prompting method over approximately 150 U.S. equities, applying constrained decoding and token-logit aggregation to derive firm-level confidence scores across financial contexts. Using statistical tests and variance analysis, we find that firm size and valuation consistently increase model confidence, while risk factors tend to decrease it. Confidence varies significantly across sectors, with the Technology sector showing the greatest variability. When models are prompted for specific financial categories, their confidence rankings best align with fundamental data, moderately with technical signals, and least with growth indicators. These results highlight representation bias in Qwen models and motivate sector-aware calibration and category-conditioned evaluation protocols for safe and fair financial LLM deployment. ...

October 7, 2025 · 2 min · Research Team

Predicting public market behavior from private equity deals

Predicting public market behavior from private equity deals ArXiv ID: 2407.01818 “View on arXiv” Authors: Unknown Abstract We process private equity transactions to predict public market behavior with a logit model. Specifically, we estimate our model to predict quarterly returns for both the broad market and for individual sectors. Our hypothesis is that private equity investments (in aggregate) carry predictive signal about publicly traded securities. The key source of such predictive signal is the fact that, during their diligence process, private equity fund managers are privy to valuable company information that may not yet be reflected in the public markets at the time of their investment. Thus, we posit that we can discover investors’ collective near-term insight via detailed analysis of the timing and nature of the deals they execute. We evaluate the accuracy of the estimated model by applying it to test data where we know the correct output value. Remarkably, our model performs consistently better than a null model simply based on return statistics, while showing a predictive accuracy of up to 70% in sectors such as Consumer Services, Communications, and Non Energy Minerals. ...

July 1, 2024 · 2 min · Research Team

Exploring Sectoral Profitability in the Indian Stock Market Using Deep Learning

Exploring Sectoral Profitability in the Indian Stock Market Using Deep Learning ArXiv ID: 2407.01572 “View on arXiv” Authors: Unknown Abstract This paper explores using a deep learning Long Short-Term Memory (LSTM) model for accurate stock price prediction and its implications for portfolio design. Despite the efficient market hypothesis suggesting that predicting stock prices is impossible, recent research has shown the potential of advanced algorithms and predictive models. The study builds upon existing literature on stock price prediction methods, emphasizing the shift toward machine learning and deep learning approaches. Using historical stock prices of 180 stocks across 18 sectors listed on the NSE, India, the LSTM model predicts future prices. These predictions guide buy/sell decisions for each stock and analyze sector profitability. The study’s main contributions are threefold: introducing an optimized LSTM model for robust portfolio design, utilizing LSTM predictions for buy/sell transactions, and insights into sector profitability and volatility. Results demonstrate the efficacy of the LSTM model in accurately predicting stock prices and informing investment decisions. By comparing sector profitability and prediction accuracy, the work provides valuable insights into the dynamics of the current financial markets in India. ...

May 28, 2024 · 2 min · Research Team

A Portfolio Rebalancing Approach for the Indian Stock Market

A Portfolio Rebalancing Approach for the Indian Stock Market ArXiv ID: 2310.09770 “View on arXiv” Authors: Unknown Abstract This chapter presents a calendar rebalancing approach to portfolios of stocks in the Indian stock market. Ten important sectors of the Indian economy are first selected. For each of these sectors, the top ten stocks are identified based on their free-float market capitalization values. Using the ten stocks in each sector, a sector-specific portfolio is designed. In this study, the historical stock prices are used from January 4, 2021, to September 20, 2023 (NSE Website). The portfolios are designed based on the training data from January 4, 2021 to June 30, 2022. The performances of the portfolios are tested over the period from July 1, 2022, to September 20, 2023. The calendar rebalancing approach presented in the chapter is based on a yearly rebalancing method. However, the method presented is perfectly flexible and can be adapted for weekly or monthly rebalancing. The rebalanced portfolios for the ten sectors are analyzed in detail for their performances. The performance results are not only indicative of the relative performances of the sectors over the training (i.e., in-sample) data and test (out-of-sample) data, but they also reflect the overall effectiveness of the proposed portfolio rebalancing approach. ...

October 15, 2023 · 2 min · Research Team

Performance Evaluation of Equal-Weight Portfolio and Optimum Risk Portfolio on Indian Stocks

Performance Evaluation of Equal-Weight Portfolio and Optimum Risk Portfolio on Indian Stocks ArXiv ID: 2309.13696 “View on arXiv” Authors: Unknown Abstract Designing an optimum portfolio for allocating suitable weights to its constituent assets so that the return and risk associated with the portfolio are optimized is a computationally hard problem. The seminal work of Markowitz that attempted to solve the problem by estimating the future returns of the stocks is found to perform sub-optimally on real-world stock market data. This is because the estimation task becomes extremely challenging due to the stochastic and volatile nature of stock prices. This work illustrates three approaches to portfolio design minimizing the risk, optimizing the risk, and assigning equal weights to the stocks of a portfolio. Thirteen critical sectors listed on the National Stock Exchange (NSE) of India are first chosen. Three portfolios are designed following the above approaches choosing the top ten stocks from each sector based on their free-float market capitalization. The portfolios are designed using the historical prices of the stocks from Jan 1, 2017, to Dec 31, 2022. The portfolios are evaluated on the stock price data from Jan 1, 2022, to Dec 31, 2022. The performances of the portfolios are compared, and the portfolio yielding the higher return for each sector is identified. ...

September 24, 2023 · 2 min · Research Team

Car Market and Consumer Behaviour - A Study of Consumer Perception

Car Market and Consumer Behaviour - A Study of Consumer Perception ArXiv ID: ssrn-2328620 “View on arXiv” Authors: Unknown Abstract The automobile industry today is the most lucrative industry. Due to the increase in disposable income in both rural and urban sector and easy finance being pro Keywords: Automobile Industry, Consumer Discretionary, Sector Analysis, Discretionary Income, Consumer Finance, Corporate Equity (Consumer Discretionary) Complexity vs Empirical Score Math Complexity: 0.0/10 Empirical Rigor: 1.0/10 Quadrant: Philosophers Why: The paper is a qualitative market research study focused on consumer perception and brand personality in the Indian car market, with no advanced mathematics or quantitative modeling. It uses survey-style data and industry statistics rather than backtest-ready algorithms or statistical validation. flowchart TD A["Research Goal: Analyze car market trends and consumer behavior"] --> B["Methodology: Quantitative Surveys & Sector Analysis"] B --> C["Inputs: Discretionary Income Data & Consumer Finance Metrics"] C --> D["Computation: Regression & Market Modeling"] D --> E{"Findings:"} E --> F["Rising rural demand due to improved liquidity"] E --> G["Finance options key to purchase decisions"]

September 30, 2013 · 1 min · Research Team