Uncovering the mystery of ensemble learning through the information theoretical lens
![画像: 情報理論に基づく、アンサンブル学習の基本原理の解明(英語)](https://d1uzk9o9cg136f.cloudfront.net/f/16783695/rc/2024/03/19/363305f09d0d869713f74f2b656565d753fe4c83_large.jpg#lz:xlarge)
In this blog post, we introduce our paper on a theoretical framework of EL, which was presented at ICML 2022, the highest-level international conference in machine learning [1]. We proposed a fundamental theory that evaluates a given ensemble strategy by a well-grounded set of metrics. The theory answers the above question by revealing the strengths and weaknesses of an ensemble strategy in terms of its metrics. To demonstrate this, we analyzed a powerful ensemble strategy that uses diverse types of deep neural networks.