Deep learning algorithms for enhancing securities price prediction and insurance strategy optimization

Author:

Mao Yaxin1

Affiliation:

1. School of Finance, Shanxi University of Finance and Economics Taiyuan, China

Abstract

The process of attempting to estimate the future prices of particular stocks by utilizing historical data and various analytical tools, including deep learning algorithms, is called stock price prediction. Insurance providers’ overall approach and decisions to manage their risks, enhance their profitability, and give value to their policyholders are referred to as the insurance strategy. It requires various things to be considered, including underwriting procedures, pricing strategies, product creation, risk analysis, claims administration, and investment choices. This study proposed optimizing an insurance strategy and predicting securities prices using a deep learning algorithm. Initially, the real stock data sources for Microsoft Corporation (MSFT) were gathered from Ping An Insurance Company of China (PAICC) and the Shanghai-based National Association of Securities Dealers Automated Quotation (NASDAQ). Normalization is the procedure used to preprocess data for the raw data. We suggest an Enhanced dragonfly-optimized deep neural network (EDODNN) with stock price forecasting and insurance. The outcomes demonstrate that the proposed model outperforms the current methodology and achieves accuracy, precision, recall, F1 score, R2, and RMSE. To display the effectiveness of the suggested system, its performance is compared to more established methods to obtain the highest level of efficiency for the research.

Publisher

IOS Press

Subject

Artificial Intelligence,General Engineering,Statistics and Probability

Reference20 articles.

1. Cost leadership strategy and organizational performance: A case of Nyeri County, Kenya insurance companies;Njuguna;International Academic Journal of Human Resource and Business Administration,2020

2. A tail measure with variable risk tolerance: Application in dynamic portfolio insurance strategy;Hu;Methodology and Computing in Applied Probability,2022

3. Multi-DQN: An ensemble of Deep Q-learning agents for stock market forecasting;Carta;Expert Systems with Applications,2021

4. A survey of forex and stock price prediction using deep learning;Hu;Applied System Innovation,2021

5. Explainable machine learning exploiting news and domain-specific lexicon for stock market forecasting;Carta;IEEE Access,2021

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