Machine Learning and Deep Learning -- A review for Ecologists
Maximilian Pichler, Florian Hartig

TL;DR
This review explains the development, principles, and applications of machine learning and deep learning in ecology, emphasizing their predictive power, limitations in causal inference, and emerging trends like explainable AI.
Contribution
It provides a comprehensive synthesis of ML and DL algorithms, their differences from traditional methods, and their potential and challenges in ecological data analysis.
Findings
ML and DL excel at prediction tasks due to their flexibility.
They offer alternatives to traditional statistical models for inference.
Emerging trends include explainable and responsible AI in ecology.
Abstract
1. The popularity of Machine learning (ML), Deep learning (DL), and Artificial intelligence (AI) has risen sharply in recent years. Despite this spike in popularity, the inner workings of ML and DL algorithms are often perceived as opaque, and their relationship to classical data analysis tools remains debated. 2. Although it is often assumed that ML and DL excel primarily at making predictions, ML and DL can also be used for analytical tasks traditionally addressed with statistical models. Moreover, most recent discussions and reviews on ML focus mainly on DL, missing out on synthesizing the wealth of ML algorithms with different advantages and general principles. 3. Here, we provide a comprehensive overview of the field of ML and DL, starting by summarizing its historical developments, existing algorithm families, differences to traditional statistical tools, and universal ML…
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Taxonomy
TopicsData Analysis with R
