Stock Market Hype: An Empirical Investigation of the Impact of Overconfidence on Meme Stock Valuation
Abstract
1. Introduction
2. Theoretical Framework
3. Data and Methodology
3.1. Data
3.2. Investor Overconfidence Metrics
3.2.1. The Variations in Trading Volume
3.2.2. Measures of Excessive Trading
3.2.3. The Turnover Rate
3.2.4. Increase in the Number of Outstanding Shares
3.3. Methodology
4. Results
4.1. Descriptive Statistics and Correlations
4.2. Discussion of Empirical Results Related to Overconfidence and Meme Stock Valuation
4.3. Robustness and Sensitivity Analysis
4.3.1. Alternative Overconfidence Proxies and Firm Valuation
4.3.2. Dynamic System Generalized Method of Moments (GMM) Regression
5. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
1 | The empirical results obtained in this study are consistent with theoretical expectations drawn from behavioral finance and Prospect Theory (Barberis et al. 1998; Kahneman 1979). The statistically significant positive relationship between certain overconfidence proxies and meme stock valuation suggests that investor behavior in this segment deviates from standard rational expectations. These findings support the argument that overconfident investors tend to overestimate their own knowledge and predictive power, leading to mispricing through excessive trading and persistent speculative activity. Prospect Theory helps us explain this tendency, particularly the inclination of investors to become risk-seeking in the domain of losses and to anchor decisions to perceived reference points. Prior research has shown that this behavior often results in the continued holding of overvalued assets and a reluctance to realize losses (Aljifri 2023; Barber and Odean 1999; Bouteska and Regaieg 2020). The presence of such dynamics in the meme stock space, as evidenced by our findings, shows the crucial role of behavioral factors in shaping valuation. This contribution aligns with existing literature (Aloosh et al. 2023; d’Addona and Khanom 2022; Philander 2023), which emphasizes the influence of sentiment and overconfidence in amplifying market anomalies, particularly in online retail-driven trading environments. |
2 | While proxies such as changes in trading volume and turnover may be sensitive to short-term fluctuations, their repeated validation in the behavioral finance literature supports their use in capturing persistent investor traits like overconfidence. By employing a panel dataset and robust estimation techniques, including fixed-effects and dynamic system GMM models, we mitigate the influence of transitory noise and unobserved firm-specific effects. This approach enables a more accurate identification of the enduring role of overconfidence in meme stock valuation (see Aljifri 2023; Bouteska and Regaieg 2020; Statman et al. 2006; Trejos et al. 2019). |
3 | Available at https://www.quiverquant.com/scores/memestocks, accessed on 18 June 2024. |
4 | Although Equation (9) is expressed in first differences for notational clarity and consistency with Aljifri (2023), the model is estimated using the system GMM approach proposed by Blundell and Bond (1998) through the xtabond2 command in Stata Standard Edition 18. This estimation procedure automatically handles the transformation of variables and simultaneously estimates equations in levels and differences using appropriate instruments. |
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No. | Ticker | Company Name | No. | Ticker | Company Name |
---|---|---|---|---|---|
1 | ALB | Albemarle Corporation (USA) | 16 | NVAX | Novavax Inc (USA) |
2 | AMC | AMC Entertainment Holdings Inc (USA) | 17 | NTR | Nutrien Ltd. (Canada) |
3 | AAL | American Airlines Group Inc. (USA) | 18 | PANW | Palo Alto Networks, Inc. (USA) |
4 | BB | BlackBerry Limited (Canada) | 19 | PARA | Paramount Global (USA) |
5 | BTBT | Bit Digital, Inc. (USA) | 20 | PHAT | Phathom Pharmaceuticals Inc (USA) |
6 | BYND | Beyond Meat, Inc. (USA) | 21 | STX | Seagate Technology Holdings (USA) |
7 | CGC | Canopy Growth Corporation (Canada) | 22 | SIRI | Sirius XM Holdings, Inc (USA) |
8 | CCL | Carnival Corporation (USA) | 23 | SNDL | Sundial Growers Inc. (Canada) |
9 | CELH | Celsius Holdings, Inc. (USA) | 24 | SAVE | Spirit Airlines, Inc. (USA) |
10 | DKNG | DraftKings Inc. (USA) | 25 | SBUX | Starbucks Corp (USA) |
11 | EYEN | Eyenovia, Inc. (USA) | 26 | SPWR | SunPower Corporation (USA) |
12 | GME | GameStop Corp. (USA) | 27 | TLRY | Tilray Brands, Inc. (USA) |
13 | KRUS | Kura Sushi USA, Inc. (USA) | 28 | WKHS | Workhorse Group, Inc (USA) |
14 | MARA | MARA Holdings, Inc. (USA) | |||
15 | NKLA | Nikola Corporation (USA) |
Variables | Definition | Source |
---|---|---|
Tobin’s Q ratio (Tobin’sQ) | Calculated as the ratio of a firm’s market value (DWEV) to its assets’ replacement cost (DWTA), giving an indication of how much the market values a firm relative to its assets. | Refinitiv Eikon Datastream |
Market capitalization (MarketCap) | Total market value of a firm’s outstanding shares, which is calculated as the product of share price and the number of shares outstanding. | Refinitiv Eikon Datastream |
Return on assets (ROA) | Net profit as a percentage of total assets (%). | Refinitiv Eikon Datastream |
Leverage Ratio (Leverage) | Ratio between total debt and total assets. | Refinitiv Eikon Datastream |
Historical 90-day volatility | Measures the past 90-day price volatility of the firm. | Refinitiv Eikon Datastream |
Investor overconfidence () | Change in trading volume. | Refinitiv Eikon Datastream |
Panel A: Descriptive statistics | ||||||||
---|---|---|---|---|---|---|---|---|
Variable | N | Mean | Median | Sth | Min | Max | Skewness | Kurtosis |
Tobin’sQ | 672 | 2.798 | 1.653 | 3.873 | −0.034 | 29.645 | 3.809 | 20.337 |
MarketCap (M) | 672 | 14.946 | 3.405 | 28.210 | 0.002 | 140.300 | 2.834 | 10.620 |
ROA | 672 | −0.167 | −0.068 | 0.332 | −1.952 | 0.263 | −1.764 | 7.608 |
Leverage | 672 | 0.345 | 0.281 | 0.305 | 0.000 | 1.854 | 1.552 | 6.743 |
Volatility | 672 | 0.760 | 0.670 | 0.476 | 0.023 | 5.641 | 2.808 | 22.122 |
672 | −0.075 | −0.003 | 0.649 | −5.472 | 0.974 | −3.409 | 23.178 | |
et | 672 | 0.243 | 0.189 | 0.194 | 0.001 | 0.974 | 1.742 | 6.014 |
etd | 672 | 0.247 | 0.197 | 0.193 | −0.065 | 0.974 | 1.704 | 5.991 |
etm | 672 | 0.226 | 0.181 | 0.208 | −0.386 | 0.974 | 1.355 | 5.711 |
turnover | 672 | 2.556 | 0.990 | 7.280 | 0.002 | 158.732 | 15.516 | 319.333 |
iso | 672 | 0.179 | 0.002 | 1.110 | 0 | 19.794 | 11.941 | 176.364 |
Panel B: Pairwise correlations | ||||||||
Tobin’sQ | MarketCap (M) | ROA | Leverage | Volatility | ||||
Tobin’sQ | 1 | |||||||
MarketCap | 0.0603 | 1 | ||||||
ROA | 0.0006 | 0.1139 *** | 1 | |||||
Leverage | −0.1054 *** | 0.0427 | 0.0318 | 1 | ||||
Volatility | 0.0906 ** | −0.2878 *** | −0.2763 *** | −0.1383 *** | 1 | |||
Panel C: Correlation of overconfidence proxies | ||||||||
et | etd | etm | turnover | iso | ||||
1 | ||||||||
et | 0.3534 *** | 1 | ||||||
etd | 0.3601 *** | 0.9778 *** | 1 | |||||
etm | 0.3745 *** | 0.904 *** | 0.909 *** | 1 | ||||
turnover | 0.0799 ** | 0.2097 *** | 0.2132 *** | 0.1955 *** | 1 | |||
iso | −0.0816 ** | 0.0802 ** | 0.0862 ** | −0.0395 | −0.0432 | 1 |
Variable | Model |
---|---|
MarketCap | 0.0111 *** |
(0.00334) | |
ROA | 0.357 |
(0.249) | |
Leverage | −1.292 *** |
(0.306) | |
Volatility | 0.677 |
(0.446) | |
Overconfidence | 0.534 *** |
(0.146) | |
Constant | 2.663 *** |
(0.368) | |
Observations | 672 |
0.089 | |
15.54 *** | |
F-value | 14.93 *** |
Stocks | 28 |
Variables | (1) | (2) | (3) | (4) | (5) |
---|---|---|---|---|---|
MarketCap | 0.0110 *** | 0.0110 *** | 0.0113 *** | 0.0112 *** | 0.0134 *** |
(0.00351) | (0.00351) | (0.00334) | (0.00336) | (0.00304) | |
ROA | 0.469 * | 0.477 * | 0.486 * | 0.460 | 0.352 |
(0.265) | (0.270) | (0.254) | (0.308) | (0.246) | |
Leverage | −1.188 *** | −1.183 *** | −1.185 *** | −1.210 *** | −1.309 *** |
(0.266) | (0.265) | (0.279) | (0.293) | (0.303) | |
Volatility | 0.719 | 0.709 | 0.629 | 0.846 | 0.818 * |
(0.544) | (0.553) | (0.491) | (0.570) | (0.457) | |
Alt. Overconfidence: | |||||
et | 0.483 | ||||
(1.373) | |||||
etd | 0.529 | ||||
(1.398) | |||||
etm | 1.013 | ||||
(0.937) | |||||
turnover | −0.00507 | ||||
(0.0255) | |||||
iso | −0.0342 ** | ||||
(0.0142) | |||||
Constant | 2.459 *** | 2.453 *** | 2.412 *** | 2.496 *** | 2.574 *** |
(0.330) | (0.326) | (0.323) | (0.375) | (0.349) | |
Observations | 672 | 672 | 672 | 672 | 672 |
0.083 | 0.083 | 0.084 | 0.082 | 0.086 | |
15.36 *** | 15.12 *** | 15.95 *** | 96.08 *** | 29.89 *** | |
F-value | 18.03 *** | 18.29 *** | 18.41 *** | 21.85 *** | 21.79 *** |
Stocks | 28 | 28 | 28 | 28 | 28 |
Variables | (1) | (2) | (3) | (4) | (5) | |
---|---|---|---|---|---|---|
LΔ.Tobin’s Q | −0.135 | −0.153 | −0.140 | −0.138 | −0.128 | −0.119 |
(0.107) | (0.102) | (0.101) | (0.099) | (0.096) | (0.098) | |
.MarketCap | 0.033 | 0.033 | 0.028 | 0.027 | 0.027 | 0.020 |
(0.035) | (0.032) | (0.036) | (0.025) | (0.032) | (0.031) | |
.ROA | 3.071 | 2.490 | 2.990 | 2.940 | 3.584 | 3.876 |
(2.038) | (2.431) | (1.957) | (2.040) | (2.152) | (2.366) | |
.Leverage | 0.716 | 0.419 | 0.698 | 0.539 | 1.210 | 1.286 |
(1.793) | (1.470) | (1.443) | (1.120) | (2.630) | (1.774) | |
.Volatility | 0.756 | 0.748 | 0.680 | 0.719 | 0.683 | 0.716 |
(0.496) | (0.575) | (0.592) | (0.448) | (0.442) | (0.545) | |
Overconfidence: | ||||||
.tv | 0.174 | |||||
(0.271) | ||||||
.et | 0.565 | |||||
(0.956) | ||||||
.etd | 0.461 | |||||
(1.120) | ||||||
.etm | 0.320 | |||||
(0.828) | ||||||
.Turnover | 0.033 ** | |||||
(0.012) | ||||||
.iso | −0.001 | |||||
(0.002) | ||||||
Constant | −0.102 ** | −0.095 ** | −0.099 ** | −0.092 * | −0.101 ** | −0.097 ** |
(0.043) | (0.042) | (0.045) | (0.045) | (0.045) | (0.043) | |
Observations | 616 | 616 | 616 | 616 | 616 | 616 |
Number of stocks | 28 | 28 | 28 | 28 | 28 | 28 |
F-value | 3.931 *** | 5.914 *** | 4.818 *** | 3.400 *** | 27.78 *** | 4.034 *** |
AR(1) test (p-value) | 0.0582 | 0.0650 | 0.0607 | 0.0585 | 0.0571 | 0.0526 |
AR(2) test (p-value) | 0.630 | 0.537 | 0.588 | 0.569 | 0.649 | 0.671 |
Hansen test (p-value) | 0.577 | 0.702 | 0.666 | 0.691 | 0.588 | 0.709 |
Sargan test (p-value) | 0.149 | 0.109 | 0.106 | 0.167 | 0.262 | 0.207 |
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Ahadzie, R.M.; Junior, P.O.; Woode, J.K.; Daugaard, D. Stock Market Hype: An Empirical Investigation of the Impact of Overconfidence on Meme Stock Valuation. Risks 2025, 13, 127. https://doi.org/10.3390/risks13070127
Ahadzie RM, Junior PO, Woode JK, Daugaard D. Stock Market Hype: An Empirical Investigation of the Impact of Overconfidence on Meme Stock Valuation. Risks. 2025; 13(7):127. https://doi.org/10.3390/risks13070127
Chicago/Turabian StyleAhadzie, Richard Mawulawoe, Peterson Owusu Junior, John Kingsley Woode, and Dan Daugaard. 2025. "Stock Market Hype: An Empirical Investigation of the Impact of Overconfidence on Meme Stock Valuation" Risks 13, no. 7: 127. https://doi.org/10.3390/risks13070127
APA StyleAhadzie, R. M., Junior, P. O., Woode, J. K., & Daugaard, D. (2025). Stock Market Hype: An Empirical Investigation of the Impact of Overconfidence on Meme Stock Valuation. Risks, 13(7), 127. https://doi.org/10.3390/risks13070127