无监督学习
计算机科学
优势和劣势
标记数据
膨胀的
透明度(行为)
监督学习
机器学习
人工智能
人工神经网络
抗压强度
计算机安全
认识论
哲学
复合材料
材料科学
作者
Jens F. Tillmann,Alexander Hsu,Martin K. Schwarz,Eric A. Yttri
出处
期刊:Nature Methods
[Nature Portfolio]
日期:2024-02-21
卷期号:21 (4): 703-711
被引量:41
标识
DOI:10.1038/s41592-024-02200-1
摘要
To identify and extract naturalistic behavior, two methods have become popular: supervised and unsupervised. Each approach carries its own strengths and weaknesses (for example, user bias, training cost, complexity and action discovery), which the user must consider in their decision. Here, an active-learning platform, A-SOiD, blends these strengths, and in doing so, overcomes several of their inherent drawbacks. A-SOiD iteratively learns user-defined groups with a fraction of the usual training data, while attaining expansive classification through directed unsupervised classification. In socially interacting mice, A-SOiD outperformed standard methods despite requiring 85% less training data. Additionally, it isolated ethologically distinct mouse interactions via unsupervised classification. We observed similar performance and efficiency using nonhuman primate and human three-dimensional pose data. In both cases, the transparency in A-SOiD's cluster definitions revealed the defining features of the supervised classification through a game-theoretic approach. To facilitate use, A-SOiD comes as an intuitive, open-source interface for efficient segmentation of user-defined behaviors and discovered sub-actions. A-SOiD is a computational platform for behavioral annotation whose training includes elements of supervised and unsupervised learning. The approach is demonstrated on mouse, macaque and human datasets.
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