A large number of real world applications, such as user support systems, can still not be performed easily by conventional algorithms in comparison with the human brain. Such intelligence is often implemented, by using probability based systems. This paper focuses on comparing the implementation of a cellular phone intention estimation example on a Bayesian Network and Hierarchical Temporal Memory. It is found that Hierarchical Temporal Memory is a system that requires little effort for designing the application, and with some extra effort, further optimised results can easily be obtained
Abstract — Hierarchical Temporal Memory (HTM) is still largely unknown by the pattern recognition co...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
In this master thesis project, we have researched how a theoretical model of the neo-cortex can be i...
A large number of real world applications, like user support systems, can still not be performed eas...
In this study learning reinforcement and noise rejection of a spatial pooler was examined, the first...
In a quest for modeling human brain, we are going to introduce a brain model based on a general fram...
Human brain is a learning system. Human have to learn by getting exposed to something. This capabili...
This thesis looks into how one could use Hierarchal Temporal Memory (HTM) networks to generate model...
When designing intelligence for a car many different tasks can be performed. Some of these tasks can...
The article presents Bayesian hierarchical modeling frameworks for two measurement models for visual...
Includes abstract.Includes bibliograpical references (leaves 76-82).While a number of neuromorphic s...
Abstract: Cognitive function in the human brain can be evaluated through the use of EEG signal proce...
Working memory is the memory system that allows for conscious storage and manipulation of informatio...
This thesis explores the nature of cyberspace and forms an argument for it as an intangible world. T...
The human brain effortlessly solves problems that still pose a challenge for modern computers, such ...
Abstract — Hierarchical Temporal Memory (HTM) is still largely unknown by the pattern recognition co...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
In this master thesis project, we have researched how a theoretical model of the neo-cortex can be i...
A large number of real world applications, like user support systems, can still not be performed eas...
In this study learning reinforcement and noise rejection of a spatial pooler was examined, the first...
In a quest for modeling human brain, we are going to introduce a brain model based on a general fram...
Human brain is a learning system. Human have to learn by getting exposed to something. This capabili...
This thesis looks into how one could use Hierarchal Temporal Memory (HTM) networks to generate model...
When designing intelligence for a car many different tasks can be performed. Some of these tasks can...
The article presents Bayesian hierarchical modeling frameworks for two measurement models for visual...
Includes abstract.Includes bibliograpical references (leaves 76-82).While a number of neuromorphic s...
Abstract: Cognitive function in the human brain can be evaluated through the use of EEG signal proce...
Working memory is the memory system that allows for conscious storage and manipulation of informatio...
This thesis explores the nature of cyberspace and forms an argument for it as an intangible world. T...
The human brain effortlessly solves problems that still pose a challenge for modern computers, such ...
Abstract — Hierarchical Temporal Memory (HTM) is still largely unknown by the pattern recognition co...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
In this master thesis project, we have researched how a theoretical model of the neo-cortex can be i...