Learning often requires splitting continuous signals into recurring units, such as the discrete words constituting fluent speech; these units then need to be encoded in memory. A prominent candidate mechanism involves statistical learning of co-occurrence statistics like transitional probabilities (TPs), reflecting the idea that items from the same unit (e.g., syllables within a word) predict each other better than items from different units. TP computations are surprisingly flexible and sophisticated. Humans are sensitive to forward and backward TPs, compute TPs between adjacent items and longer-distance items, and even recognize TPs in novel units. We explain these hallmarks of statistical learning with a simple model with tunable excitat...
Neural networks have had many great successes in recent years, particularly with the advent of deep ...
Statistical learning is proposed as a mechanism for discovering structural patterns in speech throug...
In lifelong learning systems based on artificial neural networks, one of the biggest obstacles is th...
Given that there is referential uncertainty (noise) when learning words, to what extent can forgetti...
The extraction of patterns in the environment plays a critical role in many types of human learning,...
People of all ages display the ability to detect and learn from patterns in seemingly random stimuli...
Learners often need to extract recurring items from continuous sequences, in both vision and auditio...
Statistical learning is a robust mechanism of the brain that enables the extraction of environmental...
Previous neural studies have supported the hypothesis that statistical learning mechanisms are used ...
The computations involved in statistical learning have long been debated. Here, we build on work sug...
Statistical learning (SL), the process of extracting regularities from the environment, is a fundame...
© 2019 Elsevier Ltd Statistical learning, the process of extracting regularities from the environmen...
Statistical learning relies on detecting the frequency of co-occurrences of items and has been propo...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
Given that there is referential uncertainty (noise) when learning words, to what extent can forgetti...
Neural networks have had many great successes in recent years, particularly with the advent of deep ...
Statistical learning is proposed as a mechanism for discovering structural patterns in speech throug...
In lifelong learning systems based on artificial neural networks, one of the biggest obstacles is th...
Given that there is referential uncertainty (noise) when learning words, to what extent can forgetti...
The extraction of patterns in the environment plays a critical role in many types of human learning,...
People of all ages display the ability to detect and learn from patterns in seemingly random stimuli...
Learners often need to extract recurring items from continuous sequences, in both vision and auditio...
Statistical learning is a robust mechanism of the brain that enables the extraction of environmental...
Previous neural studies have supported the hypothesis that statistical learning mechanisms are used ...
The computations involved in statistical learning have long been debated. Here, we build on work sug...
Statistical learning (SL), the process of extracting regularities from the environment, is a fundame...
© 2019 Elsevier Ltd Statistical learning, the process of extracting regularities from the environmen...
Statistical learning relies on detecting the frequency of co-occurrences of items and has been propo...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
Given that there is referential uncertainty (noise) when learning words, to what extent can forgetti...
Neural networks have had many great successes in recent years, particularly with the advent of deep ...
Statistical learning is proposed as a mechanism for discovering structural patterns in speech throug...
In lifelong learning systems based on artificial neural networks, one of the biggest obstacles is th...