The role of prior information and computational power in Machine Learning
Diego Marcondes, Adilson Simonis, Junior Barrera

TL;DR
This paper explores how prior information and computational power influence machine learning, emphasizing the balance between interpretability and performance, and advocating for theoretical research to better understand classifier properties.
Contribution
It discusses the complementary roles of prior information and computational power in machine learning, highlighting the need for theoretical insights into classifier properties.
Findings
Prior information enhances interpretability of models.
Computational power improves performance.
Combining both approaches yields better understanding and results.
Abstract
Science consists on conceiving hypotheses, confronting them with empirical evidence, and keeping only hypotheses which have not yet been falsified. Under deductive reasoning they are conceived in view of a theory and confronted with empirical evidence in an attempt to falsify it, and under inductive reasoning they are conceived based on observation, confronted with empirical evidence and a theory is established based on the not falsified hypotheses. When the hypotheses testing can be performed with quantitative data, the confrontation can be achieved with Machine Learning methods, whose quality is highly dependent on the hypotheses' complexity, hence on the proper insertion of prior information into the set of hypotheses seeking to decrease its complexity without loosing good hypotheses. However, Machine Learning tools have been applied under the pragmatic view of instrumentalism, which…
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Taxonomy
TopicsMachine Learning and Data Classification · Computational Drug Discovery Methods · Explainable Artificial Intelligence (XAI)
