SOTAVerified

Representation Learning

Representation Learning is a process in machine learning where algorithms extract meaningful patterns from raw data to create representations that are easier to understand and process. These representations can be designed for interpretability, reveal hidden features, or be used for transfer learning. They are valuable across many fundamental machine learning tasks like image classification and retrieval.

Deep neural networks can be considered representation learning models that typically encode information which is projected into a different subspace. These representations are then usually passed on to a linear classifier to, for instance, train a classifier.

Representation learning can be divided into:

  • Supervised representation learning: learning representations on task A using annotated data and used to solve task B
  • Unsupervised representation learning: learning representations on a task in an unsupervised way (label-free data). These are then used to address downstream tasks and reducing the need for annotated data when learning news tasks. Powerful models like GPT and BERT leverage unsupervised representation learning to tackle language tasks.

More recently, self-supervised learning (SSL) is one of the main drivers behind unsupervised representation learning in fields like computer vision and NLP.

Here are some additional readings to go deeper on the task:

( Image credit: Visualizing and Understanding Convolutional Networks )

Papers

Showing 23712380 of 10580 papers

TitleStatusHype
Multi-modal Representation Learning for Cross-modal Prediction of Continuous Weather Patterns from Discrete Low-Dimensional Data0
Cross-Scale MAE: A Tale of Multi-Scale Exploitation in Remote SensingCode2
Triple Disentangled Representation Learning for Multimodal Affective Analysis0
GPS: Graph Contrastive Learning via Multi-scale Augmented Views from Adversarial Pooling0
Deep Embedding Clustering Driven by Sample Stability0
RecDCL: Dual Contrastive Learning for RecommendationCode1
Contrastive Learning and Mixture of Experts Enables Precise Vector EmbeddingsCode1
DGNN: Decoupled Graph Neural Networks with Structural Consistency between Attribute and Graph Embedding RepresentationsCode0
Product Manifold Representations for Learning on Biological PathwaysCode0
Asymptotic Midpoint Mixup for Margin Balancing and Moderate Broadening0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1SciNCLAvg.81.8Unverified
2SPECTERAvg.80Unverified
3CiteomaticAvg.76Unverified
4Sci-DeCLUTRAvg.66.6Unverified
5SciBERTAvg.59.6Unverified
6BioBERTAvg.58.8Unverified
7CiteBERTAvg.58.8Unverified
#ModelMetricClaimedVerifiedStatus
1top_model_weights_with_3d_21:1 Accuracy0.75Unverified
#ModelMetricClaimedVerifiedStatus
1Resnet 18Accuracy (%)97.05Unverified
#ModelMetricClaimedVerifiedStatus
1Morphological NetworkAccuracy97.3Unverified
#ModelMetricClaimedVerifiedStatus
1Max Margin ContrastiveSilhouette Score0.56Unverified