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Glosarium AI

Kamus lengkap Kecerdasan Buatan

162
kategori
2.032
subkategori
23.060
istilah
📂
subkategori

Query by Committee

Approche où un comité de modèles vote pour identifier les échantillons avec le plus grand désaccord entre les membres.

17 istilah
📂
subkategori

Uncertainty Sampling

Strategy selecting samples for which the current model is least certain about its predictions.

9 istilah
📂
subkategori

Active Learning by Pool

Method where the algorithm selects the most informative samples from a pool of unlabeled data.

8 istilah
📂
subkategori

Active Learning on Data Streams

Approach where each sample arrives sequentially and the system instantly decides whether to label it or not.

14 istilah
📂
subkategori

Weighted Density

Strategy combining model uncertainty with data density to avoid outliers and favor representative regions.

14 istilah
📂
subkategori

Strategies Based on Margins

Selection based on the margin between the most probable classes, favoring samples near the decision boundary.

17 istilah
📂
subkategori

Active Learning for Deep Learning

Adaptation of active learning strategies specifically optimized for deep neural network architectures.

7 istilah
📂
subkategori

Adversarial Active Learning

Use of generative adversarial models to create or select samples maximizing classifier uncertainty.

15 istilah
📂
subkategori

Active Learning with Multiple Annotators

Strategies optimizing sample selection and assignment to annotators based on their expertise and cost.

17 istilah
📂
subkategori

Budget-aware Active Learning

Approaches integrating budget constraints and variable annotation costs into the selection strategy.

20 istilah
📂
subkategori

Active Reinforcement Learning

Use of reinforcement learning agents to learn the optimal sample selection policy.

16 istilah
📂
subkategori

Active Learning for NLP

Specialized strategies for natural language processing, handling the specificities of textual and sequential data.

13 istilah
🔍

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