Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Modeling and Prediction of Exchange Rates Using Topp-Leone Burr Type X, Machine Learning and Deep Learning Models

View through CrossRef
This paper introduces the Topp-Leone Burr X distribution (TLBXD), a novel extension of the Burr X distribution, developed within the framework of the Topp-Leone-G family. The TLBXD is designed to effectively model varying datasets, addressing the limitations of classical distributions when applied to heterogeneous data. We derived and presented key mathematical and statistical properties of the TLBXD, ensuring their clarity and applicability for practical use. A simulation study was conducted to evaluate the efficiency of different parameter estimation methods, including least squares (LS), maximum product of spacings (MPS), weighted least squares (WLS), and maximum likelihood (ML). The proposed distribution was applied to two real-world dates related to the daily exchange rates of the Nigerian Naira against the EURO and RIYAL. The TLBXD demonstrated superior performance compared to existing sub-models. In addition to the data modeling, this research also applied the proposed distribution to explore the predictive capabilities of machine learning and deep learning techniques for exchange rate forecasting. Three machine learning models, including the Extreme Gradient Boosting (XGBoost), Random Forest, and Light Gradient Boosting Machine (LightGBM) were evaluated alongside a deep learning algorithm, the Long Short-Term Memory (LSTM). The models were trained on 80% of the data set and tested on the remaining 20% to assess prediction accuracy. The results reveal that the LSTM model has significantly outperformed the machine learning models in forecasting exchange rates, as evidenced by lower root means squared errors (RMSE) and mean absolute errors (MAE) values.
Title: Modeling and Prediction of Exchange Rates Using Topp-Leone Burr Type X, Machine Learning and Deep Learning Models
Description:
This paper introduces the Topp-Leone Burr X distribution (TLBXD), a novel extension of the Burr X distribution, developed within the framework of the Topp-Leone-G family.
The TLBXD is designed to effectively model varying datasets, addressing the limitations of classical distributions when applied to heterogeneous data.
We derived and presented key mathematical and statistical properties of the TLBXD, ensuring their clarity and applicability for practical use.
A simulation study was conducted to evaluate the efficiency of different parameter estimation methods, including least squares (LS), maximum product of spacings (MPS), weighted least squares (WLS), and maximum likelihood (ML).
The proposed distribution was applied to two real-world dates related to the daily exchange rates of the Nigerian Naira against the EURO and RIYAL.
The TLBXD demonstrated superior performance compared to existing sub-models.
In addition to the data modeling, this research also applied the proposed distribution to explore the predictive capabilities of machine learning and deep learning techniques for exchange rate forecasting.
Three machine learning models, including the Extreme Gradient Boosting (XGBoost), Random Forest, and Light Gradient Boosting Machine (LightGBM) were evaluated alongside a deep learning algorithm, the Long Short-Term Memory (LSTM).
The models were trained on 80% of the data set and tested on the remaining 20% to assess prediction accuracy.
The results reveal that the LSTM model has significantly outperformed the machine learning models in forecasting exchange rates, as evidenced by lower root means squared errors (RMSE) and mean absolute errors (MAE) values.

Related Results

Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
ON THE PROPERTIES OF TOPP-LEONE KUMARASWAMYWEIBUL DISTRIBUTION WITH APPLICATIONS TO BIOMEDICAL DATA
ON THE PROPERTIES OF TOPP-LEONE KUMARASWAMYWEIBUL DISTRIBUTION WITH APPLICATIONS TO BIOMEDICAL DATA
In this study, a new four-parameter lifetime distribution called the Topp Leone KumaraswamyWeibull distribution was derived using the Topp-Leone Kumaraswamy-G family of distributio...
Half Logistic-Topp-Leone Lomax Distribution: Properties and Statistical Inference
Half Logistic-Topp-Leone Lomax Distribution: Properties and Statistical Inference
A new generalization of the Topp-Leone Lomax distribution was developed. The new distribution is a half logistic transformation of the Topp-Leone Lomax distribution. Some important...
Drilling Burr Formation With Tool Wear
Drilling Burr Formation With Tool Wear
Automated assembly processes are being widely used in aircraft manufacturing as a hole must be drilled before fastener installation. Burr formation is of importance for machining p...
Drilling Burr Formation With Tool Wear
Drilling Burr Formation With Tool Wear
Automated assembly processes are being widely used in aircraft manufacturing as a hole must be drilled before fastener installation. Burr formation is of importance for machining p...
The Topp Leone Kumaraswamy-G Family of Distributions with Applications to Cancer Disease Data
The Topp Leone Kumaraswamy-G Family of Distributions with Applications to Cancer Disease Data
Background: In the last few years, statisticians have introduced new generated families of univariate distributions. These new generators are obtained by adding one or more extra s...
The Sine Topp-Leone Exponentiated Inverted Kumaraswamy Distribution and its Application on Environmental Data
The Sine Topp-Leone Exponentiated Inverted Kumaraswamy Distribution and its Application on Environmental Data
This paper introduces a new four-parameter lifetime continuous distribution, derived by compounding the Topp-Leone exponentiated inverted Kumaraswamy model with the Sine-G family o...

Back to Top