The International Workshop on Deep and Transfer Learning

Event Dates

Sep 24, 2024 - Sep 27, 2024

Location

Dubrovnik, Croatia

Submission Deadline

Jul 25, 2024

Deep learning approaches have caused tremendous advances in many areas of computer science. Deep learning is a branch of machine learning where the learning process is done using deep and complex architectures such as recurrent convolutional artificial neural networks. Many computer science applications have utilized deep learning such as computer vision, speech recognition, natural language processing, sentiment analysis, social network analysis, and robotics. The success of deep learning enabled the application of learning models such as reinforcement learning in which the learning process is only done by trial-and-error, solely from actions rewards or punishments. Deep reinforcement learning come to create systems that can learn how to adapt in the real world. As deep learning utilizes deep and complex architectures, the learning process usually is time and effort consuming and need huge labeled data sets. This inspired the introduction of transfer and multi-task learning approaches to better exploit the available data during training and adapt previously learned knowledge to emerging domains, tasks, or applications.

Despite the fact that many research activities is ongoing in these areas, many challenging are still unsolved. This workshop will bring together researchers working on deep learning, working on the intersection of deep learning and reinforcement learning, and/or using transfer learning to simplify deep leaning, and it will help researchers with expertise in one of these fields to learn about the others. The workshop also aims to bridge the gap between theories and practices by providing the researchers and practitioners the opportunity to share ideas and discuss and criticize current theories and results. We invite the submission of original papers on all topics related to deep learning, deep reinforcement learning, and transfer and multi-task learning, with special interest in but not limited to:

Deep learning for innovative applications such machine translation, computational biology

Deep Learning for Natural Language Processing

Deep Learning for Recommender Systems

Deep learning for computer vision

Deep learning for systems and networks resource management

Optimization for Deep Learning

Deep Reinforcement Learning

Deep transfer learning for robots

Determining rewards for machines

Machine translation

Energy consumption issues in deep reinforcement learning

Deep reinforcement learning for game playing

Stabilize learning dynamics in deep reinforcement learning

Scaling up prior reinforcement learning solutions

Deep Transfer and multi-task learning:

New perspectives or theories on transfer and multi-task learning

Dataset bias and concept drift

Transfer learning and domain adaptation

Multi-task learning

Feature based approaches

Instance based approaches

Deep architectures for transfer and multi-task learning

Transfer across different architectures, e.g. CNN to RNN

Transfer across different modalities, e.g. image to text

Transfer across different tasks, e.g. object recognition and detection

Transfer from weakly labeled or noisy data, e.g. Web data

Datasets, benchmarks, and open-source packages

Recourse efficient deep learning