Chiang, Urban, Baldridge |
(1996) |
NAV p.s. |
1981–1986 101 US mutual funds |
5 years to predict year 6 |
BPN vs regression models |
MAPE |
BPN model provided better predictions compared to regression models based on MAPE |
Indro et al. |
(1999) |
1-factor Jensen's alpha |
1993–1995 559 US equity funds |
3 years (1 year to predict 1 year) |
MLP with GRG2 |
ME, MAE, MAPE, MSE |
MLP model outperformed other models based on multiple error measures |
Lin et al. |
(2007) |
NAV p.s. |
3 single national equity funds of Taiwan, US and Japan |
|
RBFNN |
Error Index (EI) |
RBFNN found effective |
Wang and Huang |
(2010) |
Sharpe index |
3 historical periods 1995–2000 Mutual funds listed in the Taiwan Economic Journal |
72 months (1 year to predict 1 year; every two years) |
FANNC vs BPN |
RMSE |
FANNC model outperformed the BPN in terms of RMSE, providing more accurate predictions |
Yan et al. |
(2010) |
NAV p.s. |
1 equity Chinese investment fund |
|
BPN |
|
good prediction accuracy |
Ray and Vina |
(2011) |
NAV p.s. |
1999–2004 10 funds from India |
60 months |
BPN |
|
BPN demonstrated strong performance in predicting fund values |
Priyadarshini and Babu |
(2012) |
NAV p.s. |
2003–2009 1 fund |
84 months |
BPN |
MAE, MSE, RMSE, MAPE, MPE |
Error measures indicate solid performance of the BNP model |
Priyadarshini |
(2015) |
NAV p.s. |
2006–2012 1 fund |
72 months |
MLP |
MAE, MSE, MAPE, RMSE, MPE |
Good predictive performance based on these error metrics |
Narula, Jha, Panda |
(2015) |
NAV p.s. |
15-Oct-2012 till 2-Jan-2014; 200 Indian funds |
300 consecutive trading days |
FLANN vs RBF vs MLP |
MAPE |
FLANN performed well according to MAPE |
Anish and Majhi |
(2016) |
NAV p.s. |
|
|
RBF and FLANN |
MAPE, RMSE |
both models performed well, with FLANN having a slight advantage in terms of MAPE and RMSE |
Anish, B. Majhi, R. Majhi |
(2018) |
NAV p.s. |
|
|
RBF-PSO in comparison to MLANN, FLANN and RBFNN |
MAPE, RMSE |
The RBF-PSO model was the most accurate according to MAPE and RMSE |
Han et al. |
(2018) |
NAV p.s. |
31-Aug-2015 till 1-Jul-2016 2 funds |
210 days |
GRNN |
RMSE, RTIC, MAE, MAPE, CE |
GRNN provides highly accurate predictions |
Pan et al. |
2019 |
NAV p.s. |
31-Aug-2015 till 1-Jul-2016 17 balanced open-end funds |
210 days |
BPN vs GABPN vs multiple regression |
RMSE, RTIC, MAE, MAPE, CE |
BPN model showed superior performance |
Das et al. |
(2020) |
|
SBI Magnum Equity and UTI Equity |
2010 |
BPN, RBPNN, RRBFNN |
MSE, RMSE, MAPE |
RBPNN outperformed over the other two prediction methods |
Rout, Koudjonou, Satapathy |
(2020) |
NAV p.s. (normalized) |
1998–2002 5 equity funds |
1065–1255 days (80% of days in training and 20% of days in testing) |
FLANN |
RMSE, MAPE |
FLANN found effective |
Li and Rossi |
(2020) |
Carhart (1997) 4-factor adjusted alpha |
1980–2018 2980 US equity funds |
10 years of training to predict 1 subsequent year alpha |
BRT, lasso, elastic net, random forest, NN |
MAE, MSE, RMSE |
Especially BRT and random forest outperform traditional regression models in predicting fund performance |
Kaniel et al. |
(2023) |
4/5/6/8-factor Jensen's alpha |
1980–2019 3275 U.S. equity funds |
last month or year data to predict the next month |
FFN |
MAE |
FFN models provided accurate predictions |
DeMiguel et al. |
(2023) |
6-factor Jensen's alpha |
1980–2020 8767 US equity funds |
10 years of training to predict 1 year alpha |
Gradient boosting: random forest, elastic net |
MAE, MSE, RMSE |
these advanced machine learning models performed well in prediction accuracy over long training periods. |