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74 results
arxiv.org πŸ“… 2022 πŸ“° arXiv πŸ“„ PDF
Learning Curves for Decision Making in Supervised Machine Learning: A Survey
πŸ‘€ Felix Mohr; Jan N. van Rijn

Learning curves are a concept from social sciences that has been adopted in the context of machine learning to assess the performance of a learning algorithm with respect to a certain resource, e.g., the number of training examples or the number of training iterations. Learning curves have important applications in sev…

cs.LG
DOI: 10.1007/s10994-024-06619-7
arxiv.org πŸ“… 2020 πŸ“° arXiv πŸ“„ PDF
DOME: Recommendations for supervised machine learning validation in biology
πŸ‘€ Ian Walsh; Dmytro Fishman; Dario Garcia-Gasulla; Tiina Titma; Gianluca Pollastri; The ELIXIR Machine Learning focus group; Jen Harrow; Fotis E. Psomopoulos; Silvio C. E. Tosatto

Modern biology frequently relies on machine learning to provide predictions and improve decision processes. There have been recent calls for more scrutiny on machine learning performance and possible limitations. Here we present a set of community-wide recommendations aiming to help establish standards of supervised ma…

q-bio.OT cs.LG
arxiv.org πŸ“… 2024 πŸ“° arXiv πŸ“„ PDF
Generalizing Machine Learning Evaluation through the Integration of Shannon Entropy and Rough Set Theory
πŸ‘€ Olga Cherednichenko; Dmytro Chernyshov; Dmytro Sytnikov; Polina Sytnikova

This research paper delves into the innovative integration of Shannon entropy and rough set theory, presenting a novel approach to generalize the evaluation approach in machine learning. The conventional application of entropy, primarily focused on information uncertainty, is extended through its combination with rough…

cs.LG
arxiv.org πŸ“… 2022 πŸ“° arXiv πŸ“„ PDF
Explanatory machine learning for sequential human teaching
πŸ‘€ Lun Ai; Johannes Langer; Stephen H. Muggleton; Ute Schmid

The topic of comprehensibility of machine-learned theories has recently drawn increasing attention. Inductive Logic Programming (ILP) uses logic programming to derive logic theories from small data based on abduction and induction techniques. Learned theories are represented in the form of rules as declarative descript…

cs.AI cs.LG
DOI: 10.1007/s10994-023-06351-8
arxiv.org πŸ“… 2023 πŸ“° arXiv πŸ“„ PDF
Changing Data Sources in the Age of Machine Learning for Official Statistics
πŸ‘€ Cedric De Boom; Michael Reusens

Data science has become increasingly essential for the production of official statistics, as it enables the automated collection, processing, and analysis of large amounts of data. With such data science practices in place, it enables more timely, more insightful and more flexible reporting. However, the quality and in…

stat.ML cs.LG
arxiv.org πŸ“… 2017 πŸ“° arXiv πŸ“„ PDF
Beyond Volume: The Impact of Complex Healthcare Data on the Machine Learning Pipeline
πŸ‘€ Keith Feldman; Louis Faust; Xian Wu; Chao Huang; Nitesh V. Chawla

From medical charts to national census, healthcare has traditionally operated under a paper-based paradigm. However, the past decade has marked a long and arduous transformation bringing healthcare into the digital age. Ranging from electronic health records, to digitized imaging and laboratory reports, to public healt…

cs.CY cs.LG stat.ML
DOI: 10.1007/978-3-319-69775-8_9
arxiv.org πŸ“… 2020 πŸ“° arXiv πŸ“„ PDF
The Human Effect Requires Affect: Addressing Social-Psychological Factors of Climate Change with Machine Learning
πŸ‘€ Kyle Tilbury; Jesse Hoey

Machine learning has the potential to aid in mitigating the human effects of climate change. Previous applications of machine learning to tackle the human effects in climate change include approaches like informing individuals of their carbon footprint and strategies to reduce it. For these methods to be the most effec…

cs.AI
arxiv.org πŸ“… 2019 πŸ“° arXiv πŸ“„ PDF
Automatic Machine Learning by Pipeline Synthesis using Model-Based Reinforcement Learning and a Grammar
πŸ‘€ Iddo Drori; Yamuna Krishnamurthy; Raoni Lourenco; Remi Rampin; Kyunghyun Cho; Claudio Silva; Juliana Freire

Automatic machine learning is an important problem in the forefront of machine learning. The strongest AutoML systems are based on neural networks, evolutionary algorithms, and Bayesian optimization. Recently AlphaD3M reached state-of-the-art results with an order of magnitude speedup using reinforcement learning with …

cs.LG stat.ML
arxiv.org πŸ“… 2023 πŸ“° arXiv πŸ“„ PDF
Physics-Inspired Interpretability Of Machine Learning Models
πŸ‘€ Maximilian P Niroomand; David J Wales

The ability to explain decisions made by machine learning models remains one of the most significant hurdles towards widespread adoption of AI in highly sensitive areas such as medicine, cybersecurity or autonomous driving. Great interest exists in understanding which features of the input data prompt model decision ma…

cs.LG cs.AI
arxiv.org πŸ“… 2026 πŸ“° arXiv πŸ“„ PDF
MerLin: A Discovery Engine for Photonic and Hybrid Quantum Machine Learning
πŸ‘€ Cassandre Notton; Benjamin Stott; Philippe Schoeb; Anthony Walsh; GrΓ©goire Leboucher; Vincent Espitalier; Vassilis Apostolou; Louis-FΓ©lix Vigneux; Alexia Salavrakos; Jean Senellart

Identifying where quantum models may offer practical benefits in near term quantum machine learning (QML) requires moving beyond isolated algorithmic proposals toward systematic and empirical exploration across models, datasets, and hardware constraints. We introduce MerLin, an open-source framework designed as a disco…

cs.LG cs.PL quant-ph
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