NEU GRAND LIBRARY
Opening Hours: Monday-Saturday, 08:00-20:00 | E-mail: library@neu.edu.tr
 

You are not logged in Show Basket
  Home     Advanced Search     Back  
  Brief display     MARC Display     Reserve  
Close price prediction of NASDAQ using LSTM/ (Adikankwu, Charles.)
Bibliographical information (record 426780)
Help
Close price prediction of NASDAQ using LSTM/
Author:
Adikankwu, Charles. Search Author in Amazon Books

Publisher:
University of Kyrenia,
Edition:
2023.
Classification:
HG4515.5
URL:

http://docs.neu.edu.tr/library/9663807771.pdf
Additional related names
Detailed notes
    - Institute of Graduate Studies - department Big Data Analytics
    - Thesis (Master)
    - Includes references (47-50 p.)
    - This thesis examines the use of LSTM neural networks to forecast the closing price of the NASDAQ index using historical price data. The study makes use of a dataset that spans many years and includes daily closing prices, volume, and other NASDAQ index elements. LSTM networks are used to forecast future closing prices based on historical data, with an emphasis on a 60-day prediction window. Metrics like R2 , Mean Absolute Percentage Error (MAPE), and Root Mean Squared Error (RMSE) are used for evaluating the performance of the LSTM model. The findings show that the LSTM model predicts future closing prices well, with lower error rates than baseline models. The research additionally examines at how different input parameters and network structure influence the model's performance. Overall, the study indicates that LSTM networks are beneficial in predicting the price of index and explain their potential for application in financial forecasting applications.
    - Text in English.
Related links
Items (2)
Barcode
Status
Library
Section
9664996772
Item available
University of Kyrenia Grand Library1st Floor (HG4515.5 .A35 2023)
Reference Section
9663807771
Item available
University of Kyrenia Grand LibraryGrnd. Floor (HG4515.5 .A35 2023)
Reference Section

NEAR EAST UNIVERSITY GRAND LIBRARY +90 (392) 223 64 64 Ext:5536. Near East Boulevard, Nicosia, TRNC
This software is developed by NEU Library and it is based on Koha OSS
conforms to MARC21 library data transfer rules.