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The Journal of Financial Data Science

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Relevance-Based Prediction: A Transparent and Adaptive Alternative to Machine Learning

Megan Czasonis, Mark Kritzman and David Turkington
The Journal of Financial Data Science Winter 2023, 5 (1) 27-46; DOI: https://doi.org/10.3905/jfds.2022.1.110
Megan Czasonis
is a managing director at State Street Associates in Cambridge, MA
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Mark Kritzman
is the chief executive officer at Windham Capital Management in Boston, MA, and a senior lecturer at the MIT Sloan School of Management in Cambridge, MA
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David Turkington
is a senior managing director at State Street Associates in Cambridge, MA
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Abstract

The authors describe a new prediction system based on relevance, which gives a mathematically precise measure of the importance of an observation to forming a prediction, as well as fit, which measures a specific prediction’s reliability. They show how their relevance-based approach to prediction identifies the optimal combination of observations and predictive variables for any given prediction task, thereby presenting a unified alternative to both kernel regression and lasso regression, which they call CKT regression. They argue that their new prediction system addresses complexities that are beyond the capacity of linear regression analysis but in a way that is more transparent, more flexible, and less arbitrary than widely used machine learning algorithms.

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The Journal of Financial Data Science: 5 (1)
The Journal of Financial Data Science
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Relevance-Based Prediction: A Transparent and Adaptive Alternative to Machine Learning
Megan Czasonis, Mark Kritzman, David Turkington
The Journal of Financial Data Science Jan 2023, 5 (1) 27-46; DOI: 10.3905/jfds.2022.1.110

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Relevance-Based Prediction: A Transparent and Adaptive Alternative to Machine Learning
Megan Czasonis, Mark Kritzman, David Turkington
The Journal of Financial Data Science Jan 2023, 5 (1) 27-46; DOI: 10.3905/jfds.2022.1.110
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  • Article
    • Abstract
    • THE PAST: LINEAR REGRESSION ANALYSIS
    • THE PRESENT: MACHINE LEARNING
    • THE FUTURE: RELEVANCE-BASED PREDICTION
    • EMPIRICAL ILLUSTRATION
    • COMPARATIVE SUMMARY
    • CONCLUSION
    • ACKNOWLEDGMENTS
    • APPENDIX
    • ENDNOTES
    • REFERENCES
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