This study proposes a modified Geometric Brownian motion (GBM), to simulate stock price paths under normal and convoluted distributional assumptions. This study utilised four selected continuous probability distributions for the convolution because of shared properties, including normality, and parameters that have a standard distribution with a location and scale parameters of zero and one, in that order. The findings from this study revealed that the simulation of price paths looks identical under the assumption of normal distribution and normal convolved with normal, Laplace, and Rice distributions for different sample sizes and parameter settings but differs with respect to the Cauchy distribution. Furthermore, the study found that all ...
This research examines whether stock prices in the Indian stock markets follow a Geometric Brownian ...
Stock Prices have been modeled using a variety of techniques such as neural networks, simple regress...
This study examined the appropriateness of the Geometric Brownian Motion model in forecasting stock ...
This study uses the geometric Brownian motion (GBM) method to simulate stock price paths, and tests ...
Predicting and forecasting are routine day-to-day activities that guide us in making the best possib...
Stocks are something that is still interesting to this day to be discussed. Because the price tends ...
When looking at the simulation of the stock price, the Geometric Brownian motion model is a widely u...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
This Study presents the application of Geometric Brownian Motion (GBM) model for the prediction of s...
Modelling the asset returns distribution has been the focal point of modern finance for almost a cen...
High-frequency trading (HFT) involves short-term, high-volume market operations to capture profits. ...
As an extension of the geometric Brownian motion, a geometric fractional Brownian motion (GFBM) is c...
In the modeling of financial market, especially stock market, Brownian Motion play a significant rol...
This paper presents some Excel-based simulation exercises that are suitable for use in financial mo...
Stock Prices have been modeled using a variety of techniques such as neural networks, simple regress...
This research examines whether stock prices in the Indian stock markets follow a Geometric Brownian ...
Stock Prices have been modeled using a variety of techniques such as neural networks, simple regress...
This study examined the appropriateness of the Geometric Brownian Motion model in forecasting stock ...
This study uses the geometric Brownian motion (GBM) method to simulate stock price paths, and tests ...
Predicting and forecasting are routine day-to-day activities that guide us in making the best possib...
Stocks are something that is still interesting to this day to be discussed. Because the price tends ...
When looking at the simulation of the stock price, the Geometric Brownian motion model is a widely u...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
This Study presents the application of Geometric Brownian Motion (GBM) model for the prediction of s...
Modelling the asset returns distribution has been the focal point of modern finance for almost a cen...
High-frequency trading (HFT) involves short-term, high-volume market operations to capture profits. ...
As an extension of the geometric Brownian motion, a geometric fractional Brownian motion (GFBM) is c...
In the modeling of financial market, especially stock market, Brownian Motion play a significant rol...
This paper presents some Excel-based simulation exercises that are suitable for use in financial mo...
Stock Prices have been modeled using a variety of techniques such as neural networks, simple regress...
This research examines whether stock prices in the Indian stock markets follow a Geometric Brownian ...
Stock Prices have been modeled using a variety of techniques such as neural networks, simple regress...
This study examined the appropriateness of the Geometric Brownian Motion model in forecasting stock ...