Authors :
Heena Kouser; Hemanth Kumar
Volume/Issue :
Volume 9 - 2024, Issue 7 - July
Google Scholar :
https://tinyurl.com/msn8zntk
Scribd :
https://tinyurl.com/ytfkbdh9
DOI :
https://doi.org/10.38124/ijisrt/IJISRT24JUL1269
Abstract :
Machine Learning business is regular in the
insurance market to enhance the efficiency and
predictive skills of the insurance industry linear
regression as an initial and effective ml method is
adopted in this work predicting automobile insurance
claim is undertaken using these large datasets which
provides the detailed driver characteristics vehicle
characteristics and historical claim insights becomes
possible to apply linear regression analyses to indicate
and predict the likelihood and frequency of upcoming
claims to insurers One of the primary motivations for
linear regression is a very easy tool has it is pretty simple
to use, easy to interpret and at the same time easy to
scale it can benefit in managing and resolve the premium
pricing and improvement of risk assessment along with
the enhancement of the financial stability while applying
linear regression the study explains how it can be utilized
in auto insurance claims prediction the potential idea of
using better ml models for more investigation and its
pros and cons this model is mainly assessed in line with
its predictive accuracy utilizing metrics reminiscent of
mse and r-squared (R2).
Keywords :
Machine Learning Techniques; Prediction Model; Auto Insurance Claim.
References :
- N. Patel and M. Trivedi, "Deep Learning for Auto Insurance Claim Prediction." Insurance: Mathematics and Economics, 2020, Vol 93, pp. 101-112, DOI 10.1016/j.insmatheco.2020.12.001.
- J. Liu, H. Zhai, and Z. Wei, "Predicting Automobile Insurance Claims Using Gradient Boosting Machines”, Journal of Data Science, 2017, Vol 15, No 1.
- Q. Zhang, Y. Li, and X. Wang, "Hybrid Models for Predicting Auto Insurance Claims Using ML." Expert Systems with Applications, 2022, Vol. 188,115481, DOI: 10.1016/j.eswa .2022.115481.
- M. Patel and N. Prajapati,” Predictive Modelling for Auto Insurance Claims Using ML", International Journal of Computer Science and Information Security, 2019, Vol. 17, No 5
- L. Chen, Y. Chen, and Z. Huang, “Deep Learning for Predicting Auto Insurance Claims”, Expert Systems with Applications, 2020, Vol. 141.
- R. Agarwal, S. Gupta, and P. Verma, "Hybrid ML Models for Auto Insurance Claims Prediction”, Journal of Ambient Intelligence and Humanized Computing, 2021, Vol. 12, No. 6.
- A. Malekipirbazari and V. Aksakalli, "Risk Prediction in Auto Insurance: A Bayesian Network Approach”, European Journal of Operational Research, 2015, Vol. 242, No. 2.
- Y. Gokgoz and S. Atasoy, "A Comparative Study of Different ML Techniques for Auto Insurance Claim Prediction”, Procedia Computer Science, 2016, Vol 10.
- D.Y. Lee, H. Kwon, and S. Y. Choi, "Predicting Auto Insurance Claims Using Deep Learning with Vehicle Telematics Data" IEEE Access, 2017, Vol. 5, DOI: 10.1109/ACCESS. 2017.268 50
- E. Albrecher, H. Teugels and J. Beirlan,” Insurance Claim Modelling and Prediction using Extreme Gradient Boosting”, Astin Bulltin, 201 8, Vol. 48, No. 1, DOI: 10. 1017/ asb .2017. 36.
- F. Silva, P. Cortez, and M. Santos, "Auto Insurance Fraud Detection with ML: A Case Study", Journal of Risk and Financial Management, 2019, Vol. 12, No. 2, DOI: 10.3390/ jrfm12020075.
- G. Zhang, L. Jiang, and Y. Sun, "Utilizing Ensemble Learning Techniques for Auto Insurance Claim Prediction", Computers & Industrial Engineering, 2020, Vol. 14, DOI: 10. 1016/j.cie.2020 .106384
- H. N. Nguyen, T. V. Nguyen, and Q. H. Nguyen, "Auto Insurance Claim Prediction Using Hybrid Deep Learning Models", Information Sciences, 2021, Vol. 546, DOI: 10.1016 /j.ins.2 020. 11.042
- I. W. Tsai, C. H. Chen, and C. W. Huang, "Predictive Analytics for Auto Insurance Claims Using ML", Expert Systems with Applications, 2022, Vol. 186, DOI: 10.1016/j.eswa. 2021. 11 5946
- T. Choudhury, A. Roy, and A. Paul, "Deep Learning for Auto Insurance Claim Prediction: A Case Study", IEEE Transactions on Neural Net- works and Learning Systems, 2020, Vol. 31, No. 9, DOI: 10.1109/ TNNLS. 2020.298057
- https://www.kaggle.com/dataset
- 8 ML Models Explained in 20 Minutes | Data Camp
Machine Learning business is regular in the
insurance market to enhance the efficiency and
predictive skills of the insurance industry linear
regression as an initial and effective ml method is
adopted in this work predicting automobile insurance
claim is undertaken using these large datasets which
provides the detailed driver characteristics vehicle
characteristics and historical claim insights becomes
possible to apply linear regression analyses to indicate
and predict the likelihood and frequency of upcoming
claims to insurers One of the primary motivations for
linear regression is a very easy tool has it is pretty simple
to use, easy to interpret and at the same time easy to
scale it can benefit in managing and resolve the premium
pricing and improvement of risk assessment along with
the enhancement of the financial stability while applying
linear regression the study explains how it can be utilized
in auto insurance claims prediction the potential idea of
using better ml models for more investigation and its
pros and cons this model is mainly assessed in line with
its predictive accuracy utilizing metrics reminiscent of
mse and r-squared (R2).
Keywords :
Machine Learning Techniques; Prediction Model; Auto Insurance Claim.