We extend a reinforcement learning algorithm which has previously been shown to cluster data. Our extension involves creating an underlying latent space with some pre-defined structure which enables us to create a topology preserving mapping. We investigate different forms of the reward function, all of which are created with the intent of merging local and global information, thus avoiding one of the major difficulties with e.g. K-means which is its convergence to local optima depending on the initial values of its parameters. We also show that the method is quite general and can be used with the recently developed method of stochastic weight reinforcement learning [14]
Existing inverse reinforcement learning (IRL) algorithms have assumed each expert’s demonstrated tra...
Existing inverse reinforcement learning (IRL) algorithms have assumed each ex-pert’s demonstrated tr...
Applying conventional reinforcement to complex domains requires the use of an overly simplified task...
Recent advances in reinforcement-learning research have demonstrated impressive results in building ...
The study of a semi-supervised clustering has recently attracted great interest from the data cluste...
A general technique is proposed for embedding on-line clustering algorithms based on competitive lea...
We introduce a set of clustering algorithms whose performance function is such that the algorithms o...
A general technique is proposed for embedding online clustering algo-rithms based on competitive lea...
Personalisation has become omnipresent in society. For the domain of health and wellbeing such perso...
Reinforcement learning is a paradigm that can account for how organisms learn to adapt their behavio...
We [6, 7] have recently investigated several families of clustering algorithms. In this paper, we sh...
The application of reinforcement learning (RL) algorithms is often hindered by the combinatorial exp...
Grouping problems aim to partition a set of items into multiple mutually disjoint subsets according ...
Exploration plays a fundamental role in any active learning system. This study evaluates the role of...
We [5, 6] have recently investigated several families of clustering algorithms. In this paper, we sh...
Existing inverse reinforcement learning (IRL) algorithms have assumed each expert’s demonstrated tra...
Existing inverse reinforcement learning (IRL) algorithms have assumed each ex-pert’s demonstrated tr...
Applying conventional reinforcement to complex domains requires the use of an overly simplified task...
Recent advances in reinforcement-learning research have demonstrated impressive results in building ...
The study of a semi-supervised clustering has recently attracted great interest from the data cluste...
A general technique is proposed for embedding on-line clustering algorithms based on competitive lea...
We introduce a set of clustering algorithms whose performance function is such that the algorithms o...
A general technique is proposed for embedding online clustering algo-rithms based on competitive lea...
Personalisation has become omnipresent in society. For the domain of health and wellbeing such perso...
Reinforcement learning is a paradigm that can account for how organisms learn to adapt their behavio...
We [6, 7] have recently investigated several families of clustering algorithms. In this paper, we sh...
The application of reinforcement learning (RL) algorithms is often hindered by the combinatorial exp...
Grouping problems aim to partition a set of items into multiple mutually disjoint subsets according ...
Exploration plays a fundamental role in any active learning system. This study evaluates the role of...
We [5, 6] have recently investigated several families of clustering algorithms. In this paper, we sh...
Existing inverse reinforcement learning (IRL) algorithms have assumed each expert’s demonstrated tra...
Existing inverse reinforcement learning (IRL) algorithms have assumed each ex-pert’s demonstrated tr...
Applying conventional reinforcement to complex domains requires the use of an overly simplified task...