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Title

Data Flow-Based Strategies to Improve the Interpretation and Understanding of Machine Learning Models.

Authors

Brimacombe, Michael

Abstract

Data flow-based strategies that seek to improve the understanding of A.I.-based results are examined here by carefully curating and monitoring the flow of data into, for example, artificial neural networks and random forest supervised models. While these models possess structures and related fitting procedures that are highly complex, careful restriction of the data being utilized by these models can provide insight into how they interpret data structures and associated variables sets and how they are affected by differing levels of variation in the data. The goal is improving our understanding of A.I.-based supervised modeling-based results and their stability across different data sources. Some guidelines are suggested for such first-stage adjustments and related data issues.

Subjects

MACHINE learning; ARTIFICIAL neural networks; DATA structures; RANDOM forest algorithms; DATA quality

Publication

Bioengineering (Basel), 2024, Vol 11, Issue 12, p1189

ISSN

2306-5354

Publication type

Academic Journal

DOI

10.3390/bioengineering11121189

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