Effective management of learned knowledge is a challenge when modeling human-level behavior within complex, temporally extended tasks. This paper evaluates one approach to this problem: forgetting knowledge that is not in active use (as determined by base-level activation) and can likely be reconstructed if it becomes relevant. We apply this model for selective retention of learned knowledge to the working and procedural memories of Soar. When evaluated in simulated, robotic exploration and a competitive, multi-player game, these policies improve model reactivity and scaling while maintaining reasoning competence
In times of Big Data and Industry 4.0, organizational information as well as knowledge availability ...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
International audienceThis paper presents an implementation of bottom-up learning in a cognitive mod...
Intelligent systems with access to large stores of experience, or memory, can draw upon and reason a...
Abstract: "In this article we demonstrate how knowledge level learning can be performed within the S...
This paper documents a functionality-driven exploration of automatic working-memory management in So...
mo kn vation) and can likely be reconstructed if it becomes relevant. We apply this model to the wor...
© 2018, Springer Nature Switzerland AG. Humans can learn in a continuous manner. Old rarely utilized...
Motor skill retention is typically measured by asking participants to reproduce previously learned m...
Maintaining and pursuing multiple goals over varying time scales is an important ability for artific...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Abstract. Working memory is a key component of intelligence that the brain implements as persistent ...
A lifelong learning agent is able to continually learn from potentially infinite streams of pattern ...
Memory activation has been modeled in symbolic architectures in the past, but usually at the level o...
We use a model to explore the implications of ACT-R's learning and forgetting mechanisms to understa...
In times of Big Data and Industry 4.0, organizational information as well as knowledge availability ...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
International audienceThis paper presents an implementation of bottom-up learning in a cognitive mod...
Intelligent systems with access to large stores of experience, or memory, can draw upon and reason a...
Abstract: "In this article we demonstrate how knowledge level learning can be performed within the S...
This paper documents a functionality-driven exploration of automatic working-memory management in So...
mo kn vation) and can likely be reconstructed if it becomes relevant. We apply this model to the wor...
© 2018, Springer Nature Switzerland AG. Humans can learn in a continuous manner. Old rarely utilized...
Motor skill retention is typically measured by asking participants to reproduce previously learned m...
Maintaining and pursuing multiple goals over varying time scales is an important ability for artific...
Intelligent agents are supposed to learn diverse skills over their lifetime. However, when trained o...
Abstract. Working memory is a key component of intelligence that the brain implements as persistent ...
A lifelong learning agent is able to continually learn from potentially infinite streams of pattern ...
Memory activation has been modeled in symbolic architectures in the past, but usually at the level o...
We use a model to explore the implications of ACT-R's learning and forgetting mechanisms to understa...
In times of Big Data and Industry 4.0, organizational information as well as knowledge availability ...
License, which permits unrestricted use, distribution, and reproduction in any medium, provided the ...
International audienceThis paper presents an implementation of bottom-up learning in a cognitive mod...