Search the World's Largest Database of Information Science & Technology Terms & Definitions
InfInfoScipedia LogoScipedia
A Free Service of IGI Global Publishing House
Below please find a list of definitions for the term that
you selected from multiple scholarly research resources.

What is Reconstructed Error (RE)

Revolutionizing Financial Services and Markets Through FinTech and Blockchain
The Reconstructed Error (RE) is a measure of the difference between the actual value and the predicted value in a machine learning model, often used as a metric for evaluating the performance of autoencoder models.
Published in Chapter:
Predicting Cryptocurrency Prices Model Using a Stacked Sparse Autoencoder and Bayesian Optimization
S. Baranidharan (CHRIST University (Deemed), India), Raja Narayanan (Dayananda Sagar University, India), and V. Geetha (Seshadripuram Evening College, India)
DOI: 10.4018/978-1-6684-8624-5.ch005
Abstract
In recent years, digital currencies, also known as cybercash, digital money, and electronic money, have gained significant attention from researchers and investors alike. Cryptocurrency has emerged as a result of advancements in financial technology and has presented a unique opening for research in the field. However, predicting the prices of cryptocurrencies is a challenging task due to their dynamic and volatile nature. This study aims to address this challenge by introducing a new prediction model called Bayesian optimization with stacked sparse autoencoder-based cryptocurrency price prediction (BOSSAE-CPP). The main objective of this model is to effectively predict the prices of cryptocurrencies. To achieve this goal, the BOSSAE-CPP model employs a stacked sparse autoencoder (SSAE) for the prediction process and resulting in improved predictive outcomes. The results were compared to other models, and it was found that the BOSSAE-CPP model performed significantly better.
Full Text Chapter Download: US $37.50 Add to Cart
eContent Pro Discount Banner
InfoSci OnDemandECP Editorial ServicesAGOSR