Explainable AI: Bridging the Gap Between Complex Models and Human Understanding

Main Article Content

Prof. Robert George

Abstract

The increasing adoption of AI in critical domains like healthcare, finance, and legal systems has underscored the need for transparency and interpretability. This paper delves into the concept of Explainable AI (XAI), exploring methods to make complex machine learning models understandable to humans. Techniques such as SHAP, LIME, and model-agnostic approaches are discussed, alongside their application in various industries. The paper highlights the trade-offs between model accuracy and interpretability and emphasizes the importance of user-centric design in XAI systems. Challenges and future prospects for achieving explainability without compromising performance are outlined.

Article Details

How to Cite
Explainable AI: Bridging the Gap Between Complex Models and Human Understanding (P. R. George , Trans.). (2023). International Journal of Creative Research In Computer Technology and Design, 5(5). https://jrctd.in/index.php/IJRCTD/article/view/81
Section
Articles

How to Cite

Explainable AI: Bridging the Gap Between Complex Models and Human Understanding (P. R. George , Trans.). (2023). International Journal of Creative Research In Computer Technology and Design, 5(5). https://jrctd.in/index.php/IJRCTD/article/view/81

References

Li, X., & Zhang, Y. (2020). AI-powered adaptive learning systems: A review. Computers in Education, 90, 75–89. https://doi.org/10.1016/j.compedu.2020.103852

McCarthy, J. (2007). What is artificial intelligence? Stanford AI Lab. Retrieved from https://ai.stanford.edu

Minsky, M. (1986). The society of mind. Simon & Schuster.

National Institute of Standards and Technology (NIST). (2021). Artificial intelligence risk management framework. Retrieved from https://www.nist.gov

Silver, D., Huang, A., Maddison, C. J., Guez, A., Sifre, L., & van den Driessche, G. (2016). Mastering the game of Go with deep neural networks and tree search. Nature, 529(7587), 484–489. https://doi.org/10.1038/nature16961

Smith, P., & Jones, R. (2022). AI and climate change: Opportunities and challenges. Environmental Research Letters, 17(1), 123–135. https://doi.org/10.1088/1748-9326/ac1abc

Adusumilli, S., Damancharla, H., & Metta, A. (2020). Artificial Intelligence-Driven Predictive Analytics for Educational Behavior Assessment. Transactions on Latest Trends in Artificial Intelligence, 1(1). Retrieved from https://www.ijsdcs.com/index.php/TLAI/article/view/638

Adusumilli, S., Damancharla, H., & Metta, A. (2020). Machine Learning Algorithms for Fraud Detection in Financial Transactions. International Journal of Sustainable Development in Computing Science, 2(1). Retrieved from https://www.ijsdcs.com/index.php/ijsdcs/article/view/639

Adusumilli, S., Damancharla, H., & Metta, A. (2020). Leveraging AI for Real-Time Sentiment Analysis in Social Media Networks. (2020). International Numeric Journal of Machine Learning and Robots, 4(4). https://injmr.com/index.php/fewfewf/article/view/182

AI-Powered Cybersecurity Solutions for Threat Detection and Prevention (S. B. K. Adusumilli, H. Damancharla, & A. R. Metta , Trans.). (2021). International Journal of Creative Research In Computer Technology and Design, 3(3). https://jrctd.in/index.php/IJRCTD/article/view/74

Adusumilli, S., Damancharla, H., & Metta, A. (2021). Deep Learning Techniques for Image Recognition in Autonomous Vehicles. (2021). International Meridian Journal, 3(3). https://meridianjournal.in/index.php/IMJ/article/view/94

Adusumilli, S., Damancharla, H., & Metta, A. (2021). Integrating Machine Learning and Blockchain for Decentralized Identity Management Systems. (2021). International Journal of Machine Learning and Artificial Intelligence, 2(2). https://jmlai.in/index.php/ijmlai/article/view/46

Adusumilli, S., Damancharla, H., & Metta, A. (2022). Blockchain-Based Secure Framework for IoT Data Management. International Journal of Sustainable Development in Computing Science, 4(1). Retrieved from https://www.ijsdcs.com/index.php/ijsdcs/article/view/640

Brown, T. (2020). Artificial intelligence in healthcare: The future of medicine. Cambridge University Press.

Chandra, R., & Sharma, P. (2021). Machine learning for predictive analytics in education. Journal of Educational Technology, 18(3), 45–60. https://doi.org/10.1016/j.jedtech.2021.03.002

Davis, K. (2019). Ethical considerations in AI development. In S. Smith (Ed.), Advances in artificial intelligence research (pp. 123–145). Springer.

Dey, A., & Das, S. (2020). Generative adversarial networks: Applications and challenges. International Journal of Computer Science Research, 12(4), 67–78.

Gartner. (2021). Top strategic technology trends for 2022. Retrieved from https://www.gartner.com

Goodfellow, I., Bengio, Y., & Courville, A. (2016). Deep learning. MIT Press.

Adusumilli, S., Damancharla, H., & Metta, A. (2022). Optimizing Supply Chain Efficiency Through Blockchain and Smart Contracts. (2022). International Numeric Journal of Machine Learning and Robots, 6(6). https://injmr.com/index.php/fewfewf/article/view/183

Adusumilli, S., Damancharla, H., & Metta, A. (2023). Enhancing Data Privacy in Healthcare Systems Using Blockchain Technology. Transactions on Latest Trends in Artificial Intelligence, 4(4). Retrieved from https://www.ijsdcs.com/index.php/TLAI/article/view/637