Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained on a sequence of different tasks, currently the most popular neural network-based AI systems often suffer from the catastrophic forgetting problem, which means learning new knowledge leads to dramatic forgetting of the old knowledge. We use mathematical tools such as conceptors, Bayesian learning and information theory to formally study this problem and propose new theories and solutions to overcome it such that existing knowledge in AI agents can not only be preserved but also be used to accelerate learning of new tasks in the future. The proposed methods include ways to identify, protect and refresh existing knowledge in neural systems, and ...
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
In lifelong learning systems based on artificial neural networks, one of the biggest obstacles is th...
Two problems have plagued artificial neural networks since their birth in the mid-20th century. The ...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Lifelong learning is a process that involves gradual learning in dynamic environments, mirroring the...
© 2018, Springer Nature Switzerland AG. Humans can learn in a continuous manner. Old rarely utilized...
The ability to learn tasks in a sequential fashion is crucial to the development of artificial intel...
Humans continually learn and adapt to new knowledge and environments throughout their lifetimes. Rar...
In the recent years, artificial intelligence and machine learning have witnessed a radical transform...
In this paper, we propose a new continuously learning generative model, called the Lifelong Twin Gen...
One of the most visionary goals of Artificial Intelligence is to create a system able to mimic and e...
The development of robust and adaptable intelligent system has been a long standing grand challenge....
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
In lifelong learning systems based on artificial neural networks, one of the biggest obstacles is th...
Two problems have plagued artificial neural networks since their birth in the mid-20th century. The ...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Lifelong learning is a process that involves gradual learning in dynamic environments, mirroring the...
© 2018, Springer Nature Switzerland AG. Humans can learn in a continuous manner. Old rarely utilized...
The ability to learn tasks in a sequential fashion is crucial to the development of artificial intel...
Humans continually learn and adapt to new knowledge and environments throughout their lifetimes. Rar...
In the recent years, artificial intelligence and machine learning have witnessed a radical transform...
In this paper, we propose a new continuously learning generative model, called the Lifelong Twin Gen...
One of the most visionary goals of Artificial Intelligence is to create a system able to mimic and e...
The development of robust and adaptable intelligent system has been a long standing grand challenge....
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
In lifelong learning systems based on artificial neural networks, one of the biggest obstacles is th...
Two problems have plagued artificial neural networks since their birth in the mid-20th century. The ...