The characteristics of long-term, symbolic learning were investigated using Soar and ACT-R models of a task to rearrange blocks into specific configurations. Long sequences of problems were run collecting data to answer fundamental questions about long-term, symbolic learning. The questions were whether symbolic learning continues indefinitely, how learned knowledge is used, and whether performance degrades over the long term. It was found that in both systems symbolic learning eventually stopped, ACT-R produced three observable phases of learning, and both Soar and ACT-R suffer from the utility problem of degraded performance with continuous on-line learning
International audienceThis paper presents an implementation of bottom-up learning in a cognitive mod...
Increasingly, artificial learning systems are expected to overcome complex and openended problems in...
The data learning problem is a phenomenon that arises when an agent employing a cognitive architectu...
Symbolic Performance & Learning In Continuous-valued Environments by Seth Olds Rogers Co-Chairs:...
Real-world and simulated real-world domains, such as flying and driving, commonly have the character...
Abstract: "Soar is an architecture for intelligence that integrates learning into all of its problem...
Memory activation has been modeled in symbolic architectures in the past, but usually at the level o...
Abstract: "In this article we demonstrate how knowledge level learning can be performed within the S...
Much of the work in machine learning has focused on situations in which there are distinct trainin...
This paper presents an implementation of a cognitive model of a complex real-world task in the cogni...
This thesis demonstrates how the power of symbolic processing can be exploited in the learning of lo...
This dissertation presents a process model of human learning in the context of supervised concept ac...
This tutorial gives an overview of Soar as an architecture for developing agents as well as cognitiv...
We use a model to explore the implications of ACT-R's learning and forgetting mechanisms to understa...
Long-living autonomous agents must be able to learn to perform competently in novel environments. On...
International audienceThis paper presents an implementation of bottom-up learning in a cognitive mod...
Increasingly, artificial learning systems are expected to overcome complex and openended problems in...
The data learning problem is a phenomenon that arises when an agent employing a cognitive architectu...
Symbolic Performance & Learning In Continuous-valued Environments by Seth Olds Rogers Co-Chairs:...
Real-world and simulated real-world domains, such as flying and driving, commonly have the character...
Abstract: "Soar is an architecture for intelligence that integrates learning into all of its problem...
Memory activation has been modeled in symbolic architectures in the past, but usually at the level o...
Abstract: "In this article we demonstrate how knowledge level learning can be performed within the S...
Much of the work in machine learning has focused on situations in which there are distinct trainin...
This paper presents an implementation of a cognitive model of a complex real-world task in the cogni...
This thesis demonstrates how the power of symbolic processing can be exploited in the learning of lo...
This dissertation presents a process model of human learning in the context of supervised concept ac...
This tutorial gives an overview of Soar as an architecture for developing agents as well as cognitiv...
We use a model to explore the implications of ACT-R's learning and forgetting mechanisms to understa...
Long-living autonomous agents must be able to learn to perform competently in novel environments. On...
International audienceThis paper presents an implementation of bottom-up learning in a cognitive mod...
Increasingly, artificial learning systems are expected to overcome complex and openended problems in...
The data learning problem is a phenomenon that arises when an agent employing a cognitive architectu...