Treffer: Simplifying Hyperparameter Tuning in Online Machine Learning -- The spotRiverGUI

Title:
Simplifying Hyperparameter Tuning in Online Machine Learning -- The spotRiverGUI
Publisher Information:
2024-02-18
Document Type:
E-Ressource Electronic Resource
Availability:
Open access content. Open access content
Other Numbers:
COO oai:arXiv.org:2402.11594
1438527276
Contributing Source:
CORNELL UNIV
From OAIster®, provided by the OCLC Cooperative.
Accession Number:
edsoai.on1438527276
Database:
OAIster

Weitere Informationen

Batch Machine Learning (BML) reaches its limits when dealing with very large amounts of streaming data. This is especially true for available memory, handling drift in data streams, and processing new, unknown data. Online Machine Learning (OML) is an alternative to BML that overcomes the limitations of BML. OML is able to process data in a sequential manner, which is especially useful for data streams. The `river` package is a Python OML-library, which provides a variety of online learning algorithms for classification, regression, clustering, anomaly detection, and more. The `spotRiver` package provides a framework for hyperparameter tuning of OML models. The `spotRiverGUI` is a graphical user interface for the `spotRiver` package. The `spotRiverGUI` releases the user from the burden of manually searching for the optimal hyperparameter setting. After the data is provided, users can compare different OML algorithms from the powerful `river` package in a convenient way and tune the selected algorithms very efficiently.