Interpretability in Machine Learning Models
Cover
PDF

Keywords

Interpretability
Machine Learning Models
Model Explainability
Model Understanding

How to Cite

[1]
Ana da Silva, “Interpretability in Machine Learning Models”, Journal of AI in Healthcare and Medicine, vol. 1, no. 1, pp. 1–10, Apr. 2021, Accessed: Nov. 22, 2024. [Online]. Available: https://healthsciencepub.com/index.php/jaihm/article/view/15

Abstract

Interpretability in machine learning models has become increasingly important as these models are deployed in critical applications such as healthcare, finance, and autonomous vehicles. Understanding how these models make predictions is crucial for gaining trust from users and stakeholders, ensuring fairness, and identifying potential biases. This paper provides a comprehensive review of interpretability techniques for machine learning models, ranging from simple, model-agnostic methods to more complex, model-specific approaches. We discuss the importance of interpretability, explore various techniques, and evaluate their effectiveness in improving the understanding of model predictions. Additionally, we highlight challenges and future directions in this field to guide further research and development.

PDF

References

Venigandla, Kamala, and Venkata Manoj Tatikonda. "Improving Diagnostic Imaging Analysis with RPA and Deep Learning Technologies." Power System Technology 45.4 (2021).

Palle, Ranadeep Reddy. "Examine the fundamentals of block chain, its role in cryptocurrencies, and its applications beyond finance, such as supply chain management and smart contracts." International Journal of Information and Cybersecurity 1.5 (2017): 1-9.

Kathala, Krishna Chaitanya Rao, and Ranadeep Reddy Palle. "Optimizing Healthcare Data Management in the Cloud: Leveraging Intelligent Schemas and Soft Computing Models for Security and Efficiency."

Palle, Ranadeep Reddy. "Discuss the role of data analytics in extracting meaningful insights from social media data, influencing marketing strategies and user engagement." Journal of Artificial Intelligence and Machine Learning in Management 5.1 (2021): 64-69.

Palle, Ranadeep Reddy. "Compare and contrast various software development methodologies, such as Agile, Scrum, and DevOps, discussing their advantages, challenges, and best practices." Sage Science Review of Applied Machine Learning 3.2 (2020): 39-47.

Palle, Ranadeep Reddy. "Explore the recent advancements in quantum computing, its potential impact on various industries, and the challenges it presents." International Journal of Intelligent Automation and Computing 1.1 (2018): 33-40.

Downloads

Download data is not yet available.