In this paper, we will develop two kinds of dependency-sensitive distance metrics. The first captures the idea that if it can be shown that one feature can be (partly) predicted by another, then the predictable feature should be (partly) “discounted”. This strategy tackles dependencies between features as a whole, not between specific values of features. The second dependency-sensitive metric addresses the significance of similarities between specific values of features. Globally, a specific combination of values may be very predictable, or, on the other end of the scale, a combination of values may be extremely unusual. Accordingly, when comparing two specific languages, scores may be weighted as to whether they share something predictable...
Many pattern recognition and machine learning approaches employ a distance metric on patterns, or a ...
Abstract. Learning a proper distance metric is of vital importance for many distance based applicati...
Two different aspects of the problem of selecting measurements for statistical pattern recognition a...
Linguistic complexity is a measure of the cognitive difficulty of human language processing. The pr...
In data mining, the task-specific performances of conventional distance-based similarity measures va...
Real-world data typically contain a large number of features that are often heterogeneous in nature,...
International audienceThis present pilot study investigates the relationship between dependency dist...
AbstractSimilarity and dissimilarity measures are widely used in many research areas and application...
This paper introduces the first generic version of data dependent dissimilarity and shows that it pr...
Assessing similarity between features is a key step in object recognition and scene categorization t...
Abstract—The importance of introducing distance constraints to data dependencies, such as differenti...
The importance of introducing distance constraints to data dependencies, such as differential depend...
The relations between two distance matrices on the same finite set are analyzed, via metric scaling,...
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...
In data mining, similarity or distance between attrib-utes is one of the central notions. Such a not...
Many pattern recognition and machine learning approaches employ a distance metric on patterns, or a ...
Abstract. Learning a proper distance metric is of vital importance for many distance based applicati...
Two different aspects of the problem of selecting measurements for statistical pattern recognition a...
Linguistic complexity is a measure of the cognitive difficulty of human language processing. The pr...
In data mining, the task-specific performances of conventional distance-based similarity measures va...
Real-world data typically contain a large number of features that are often heterogeneous in nature,...
International audienceThis present pilot study investigates the relationship between dependency dist...
AbstractSimilarity and dissimilarity measures are widely used in many research areas and application...
This paper introduces the first generic version of data dependent dissimilarity and shows that it pr...
Assessing similarity between features is a key step in object recognition and scene categorization t...
Abstract—The importance of introducing distance constraints to data dependencies, such as differenti...
The importance of introducing distance constraints to data dependencies, such as differential depend...
The relations between two distance matrices on the same finite set are analyzed, via metric scaling,...
We survey a new area of parameter-free similarity distance measures useful in data-mining, pattern r...
In data mining, similarity or distance between attrib-utes is one of the central notions. Such a not...
Many pattern recognition and machine learning approaches employ a distance metric on patterns, or a ...
Abstract. Learning a proper distance metric is of vital importance for many distance based applicati...
Two different aspects of the problem of selecting measurements for statistical pattern recognition a...