Applications of Machine Learning in Predictive Analysis and Risk Management in Trading
Journal Title: International Journal of Innovative Research in Computer Science and Technology - Year 2023, Vol 11, Issue 6
Abstract
The stock market is considered the primary domain of importance in the financial sector where Artificial Intelligence combined with various algorithmic practices empowers investors with data-driven insights, enhancing decision-making, predicting trends, and optimizing risk management for more informed and strategic financial outcomes. This research paper delves into the real-world applications of machine learning and algorithmic trading, observing their historical evolution together and how both of these can go hand in hand to control risk and forecast the movement of a stock or an index and its future. The research is structured to provide comprehensive insights into two major subdomains in the application of AI in algorithmic trading: risk management in equity markets and predictive analysis of stock trends through the application of machine learning models and training the current existing data which is feasible and training them with respect to historical scenarios of various market trends along with various fundamental and technical analysis techniques with the help of various deep learning algorithms. For risk management of a portfolio in finance, various machine learning models can be employed, depending on the specific needs and goals of the portfolio manager or risk analyst and implementing various value-at-risk algorithms along with deep learning techniques in order to assess risk at particular trade position and to manage volatile trades at unprecedented situations. The significance of this research paper lies in its practical applicability, offering real-world solutions to enhance trading strategies and decision-making processes with a focus on mitigating risk and capitalizing on market opportunities and also giving clear insights with respect to the current practical limitations of application of the provided solution and future scope to overcome the same.
Authors and Affiliations
Kavin Karthik V
Experimental Research for the Single-Stage and Double-Stage Two-Bladed Savonius Micro-Sized Turbine for Rain Water Harvesting (RWH) System
The performance of the single-stage and double-stage two-bladed micro-sized turbines for the Rain Water Harvesting (RWH) System is investigated in this article. The RWH system is a technique of collecting rainwater and s...
Sentiment Based Product Recommendation System for E-Commerce Using Machine Learning Approaches
Today, e-commerce is a thriving industry. We do not need to approach every customer to accept their orders here. A business creates a website to offer things to clients, who can then purchase the stuff they need within t...
A Comparison of Two Conventional Power System Control Techniques with Immersion and Invariance
The problem of transient stabilization of electrical power systems has been an active area of research in recent years. In this paper we address the performance of different control laws for stabilization of the Single M...
An Analysis of Soil Salinity as an Ecological Issue
Salinity is one among most serious ecological issues affecting farmed vegetation yield although most seeds are prone to saline induced by excessive salt content in soil, & amount of l& affected by it is increasing by d...
Competition Between Saturated and Unsaturated Components for Reacting with Emerging 1:1 Adduct Radical as Cause for Peaking Dependence of 1:1 Adduct Formation Rate on Unsaturated Component Concentration in Free-Radical Nonbranched-Chain Processes of Initiated Addition to Molecular C=C, C=O Bonds, and Oxygen in Binary Systems
The kinetics of free-radical nonbranched-chain processes of addition to unsaturated compounds (such as alkenes, formaldehyde, dioxygen) was investigated. The aim of this study was the conclusion of simple kinetic equatio...