Abstract—A unique cognitive capability of humans consists in their ability to acquire new knowledge and skills from a sequence of experiences. Meanwhile, artificial intelligence systems are good at learning only the last given task without being able to remember the databases learnt in the past. We propose a novel lifelong learning methodology by employing a Teacher-Student network framework. While the Student module is trained with a new given database, the Teacher module would remind the Student about the information learnt in the past. The Teacher, implemented by a Generative Adversarial Network (GAN), is trained to preserve and replay past knowledge corresponding to the probabilistic representations of previously learn databases. Meanwh...
Systems deployed in unstructured environments must be able to adapt to novel situations. This requir...
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
The problem of a deep learning model losing performance on a previously learned task when fine-tuned...
Lifelong learning (LLL) represents the ability of an artificial intelligence system to learn success...
In this paper, we propose a new continuously learning generative model, called the Lifelong Twin Gen...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Lifelong learning is the problem of learning multiple consecutive tasks in a sequential manner, wher...
Most Knowledge Distillation (KD) approaches focus on the discriminative information transfer and ass...
Recent research efforts in lifelong learning propose to grow a mixture of models to adapt to an incr...
Lifelong learning is a process that involves gradual learning in dynamic environments, mirroring the...
In this paper, we propose an end-to-end lifelong learning mixture of experts. Each expert is impleme...
Humans and other living beings have the ability of short and long-term memorization during their ent...
Artificial autonomous agents and robots interacting in complex environments are required to continua...
We propose a novel deep network architecture for lifelong learning which we refer to as Dynamically ...
Continual learning, also known as lifelong learning, is an emerging research topic that has been att...
Systems deployed in unstructured environments must be able to adapt to novel situations. This requir...
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
The problem of a deep learning model losing performance on a previously learned task when fine-tuned...
Lifelong learning (LLL) represents the ability of an artificial intelligence system to learn success...
In this paper, we propose a new continuously learning generative model, called the Lifelong Twin Gen...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Lifelong learning is the problem of learning multiple consecutive tasks in a sequential manner, wher...
Most Knowledge Distillation (KD) approaches focus on the discriminative information transfer and ass...
Recent research efforts in lifelong learning propose to grow a mixture of models to adapt to an incr...
Lifelong learning is a process that involves gradual learning in dynamic environments, mirroring the...
In this paper, we propose an end-to-end lifelong learning mixture of experts. Each expert is impleme...
Humans and other living beings have the ability of short and long-term memorization during their ent...
Artificial autonomous agents and robots interacting in complex environments are required to continua...
We propose a novel deep network architecture for lifelong learning which we refer to as Dynamically ...
Continual learning, also known as lifelong learning, is an emerging research topic that has been att...
Systems deployed in unstructured environments must be able to adapt to novel situations. This requir...
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
The problem of a deep learning model losing performance on a previously learned task when fine-tuned...