It has been argued by Shepard that there is a robust psychological law that relates the distance between a pair of items in psychological space and the probability that they will be perceived as similar. Specifically, this probability is a negative exponential function of the distance between the pair of items. In experimental contexts, distance is typically defined in terms of a multidimensional space-but this assumption seems unlikely to hold for complex stimuli. We show that, nonetheless, the Universal Law of Generalization can be derived in the more complex setting of arbitrary stimuli, using a much more universal measure of distance. This universal distance is defined as the length of the shortest program that transforms the representa...
Bounding the generalization error of learning algorithms has a long history, which yet falls short i...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
Shepard (1 987) has proposed a universal exponential lawofstimulusgeneralization, yetexperimen-tal d...
Distance-based and generalization-based methods are two families of artificial intelligence techniqu...
Abstract—An animal that is rewarded for a response in one situation (the S+) is likely to respond to...
While Kolmogorov (1965) complexity is the accepted absolute measure of information content in an ind...
Similarity is used as an explanatory construct throughout psychology and multidimensional scaling (M...
Many pattern recognition and machine learning approaches employ a distance metric on patterns, or a ...
Similarity is used as an explanatory construct throughout psychology and multidimensional scaling (M...
We argue that confusability between items should be distinguished from generalization between items....
The normalized information distance is a universal distance measure for objects of all kinds. It is ...
Perceptual similarity is often formalized as a metric in a multi-dimensional space. Stimuli are poin...
We describe a principled way of imposing a metric representing dissimilarities on any discrete set o...
Bounding the generalization error of learning algorithms has a long history, which yet falls short i...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...
While Kolmogorov complexity is the accepted absolute measure of information content in an individual...
Shepard (1 987) has proposed a universal exponential lawofstimulusgeneralization, yetexperimen-tal d...
Distance-based and generalization-based methods are two families of artificial intelligence techniqu...
Abstract—An animal that is rewarded for a response in one situation (the S+) is likely to respond to...
While Kolmogorov (1965) complexity is the accepted absolute measure of information content in an ind...
Similarity is used as an explanatory construct throughout psychology and multidimensional scaling (M...
Many pattern recognition and machine learning approaches employ a distance metric on patterns, or a ...
Similarity is used as an explanatory construct throughout psychology and multidimensional scaling (M...
We argue that confusability between items should be distinguished from generalization between items....
The normalized information distance is a universal distance measure for objects of all kinds. It is ...
Perceptual similarity is often formalized as a metric in a multi-dimensional space. Stimuli are poin...
We describe a principled way of imposing a metric representing dissimilarities on any discrete set o...
Bounding the generalization error of learning algorithms has a long history, which yet falls short i...
Information distance is a parameter-free similarity measure based on compression, used in pattern re...
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...