Rankings are a popular and universal approach to structuring otherwise unorganized collections of items by computing a rank for each item based on the value of one or more of its attributes. This allows us, for example, to prioritize tasks or to evaluate the performance of products relative to each other. While the visualization of a ranking itself is straightforward, its interpretation is not, because the rank of an item represents only a summary of a potentially complicated relationship between its attributes and those of the other items. It is also common that alternative rankings exist which need to be compared and analyzed to gain insight into how multiple heterogeneous attributes affect the rankings. Advanced visual exploration tools ...
This paper presents MAPS - a personalized Multi-Attribute Probabilistic Selection framework - to est...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
attributes and weights, compared to the official ranking. Abstract — Rankings are a popular and univ...
Ranking points of data is utilized in everyday decision making, and multi-attribute ranking systems ...
A table is a ubiquitous representation for multiple attributes, and sorting is one of the most widel...
Projection and ranking are frequently used analysis techniques in multi-attribute data exploration. ...
Stacked bar charts are a visualization method for presenting multiple attributes of data, and many v...
In many data analysis problems, sequentially ordered (or ranked) data occurs that needs to be unders...
In many data analysis problems, sequentially ordered (or ranked) data occurs that needs to be unders...
Multi-tag-based search is quite popular on collaborative websites and sharing-online-content systems...
Learning to Rank has traditionally considered settings where given the relevance information of obje...
Ranking is fundamental in Information Retrieval (IR) and several measures have been developed over t...
Ranking is fundamental in Information Retrieval (IR) and several measures have been developed over t...
Rankings or ratings are popular methods for structuring large information sets in search engines, e-...
This paper presents MAPS - a personalized Multi-Attribute Probabilistic Selection framework - to est...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...
attributes and weights, compared to the official ranking. Abstract — Rankings are a popular and univ...
Ranking points of data is utilized in everyday decision making, and multi-attribute ranking systems ...
A table is a ubiquitous representation for multiple attributes, and sorting is one of the most widel...
Projection and ranking are frequently used analysis techniques in multi-attribute data exploration. ...
Stacked bar charts are a visualization method for presenting multiple attributes of data, and many v...
In many data analysis problems, sequentially ordered (or ranked) data occurs that needs to be unders...
In many data analysis problems, sequentially ordered (or ranked) data occurs that needs to be unders...
Multi-tag-based search is quite popular on collaborative websites and sharing-online-content systems...
Learning to Rank has traditionally considered settings where given the relevance information of obje...
Ranking is fundamental in Information Retrieval (IR) and several measures have been developed over t...
Ranking is fundamental in Information Retrieval (IR) and several measures have been developed over t...
Rankings or ratings are popular methods for structuring large information sets in search engines, e-...
This paper presents MAPS - a personalized Multi-Attribute Probabilistic Selection framework - to est...
Rank aggregation has recently been proposed as a useful abstraction that has several applications, i...
Interactive exploration of multidimensional data sets is challenging because: (1) it is difficult to...