[HTML][HTML] UVLHub: A feature model data repository using UVL and open science principles
D Romero-Organvidez, JA Galindo… - Journal of Systems and …, 2024 - Elsevier
Feature models are the de facto standard for modelling variabilities and commonalities in
features and relationships in software product lines. They are the base artefacts in many …
features and relationships in software product lines. They are the base artefacts in many …
A first prototype of a new repository for feature model exchange and knowledge sharing
Feature models are the" de facto" standard for variability modelling and are used in both
academia and industry. The MODEVAR initiative tries to establish a common textual feature …
academia and industry. The MODEVAR initiative tries to establish a common textual feature …
Meta-learning with MAML on trees
In meta-learning, the knowledge learned from previous tasks is transferred to new ones, but
this transfer only works if tasks are related. Sharing information between unrelated tasks …
this transfer only works if tasks are related. Sharing information between unrelated tasks …
Clustered task-aware meta-learning by learning from learning paths
To enable effective learning of new tasks with only a few examples, meta-learning acquires
common knowledge from the existing tasks with a globally shared meta-learner. To further …
common knowledge from the existing tasks with a globally shared meta-learner. To further …
Learning to weight filter groups for robust classification
In many real-world tasks, a canonical" big data" problem is created by combining data from
several individual groups or domains. Because test data will likely come from a new group of …
several individual groups or domains. Because test data will likely come from a new group of …
Learning to generalize to new tasks/domains with limited data
D Peng - 2023 - dr.ntu.edu.sg
The goal of Artificial Intelligence (AI) research is to develop a system that not only performs
tasks comparably to humans (eg, understanding language and vision) but also learns new …
tasks comparably to humans (eg, understanding language and vision) but also learns new …
Workshop report for next-gen AI for proliferation detection: Accelerating the development and use of explainability methods to design AI systems suitable for …
FJ Alexander, T Borders, A Sheffield, M Wonders - 2020 - osti.gov
Artificial intelligence (AI) promises powerful new capabilities in an expansive array of
applications. One area is proliferation detection, where AI can provide transformative tools to …
applications. One area is proliferation detection, where AI can provide transformative tools to …
Cross-lingual transfer with MAML on trees
In meta-learning, the knowledge learned from previous tasks is transferred to new ones, but
this transfer only works if tasks are related. Sharing information between unrelated tasks …
this transfer only works if tasks are related. Sharing information between unrelated tasks …
Exploring Knowledge Transfer with Deep Learning
S Yuan - 2022 - search.proquest.com
Deep learning methods have achieved significant success when trained on large amounts
of data. However, in many real-world applications, data are either too expensive or …
of data. However, in many real-world applications, data are either too expensive or …
Learning to Transfer Knowledge from Multiple Sources of Electrophysiological Signals
Y Li - 2020 - search.proquest.com
Deep learning methods have shown unparalleled performance when trained on vast
amounts of diverse labeled training data, often collected at great cost. In many contexts, we …
amounts of diverse labeled training data, often collected at great cost. In many contexts, we …