In mining graphical data the default Euclidean distance is often used as a notion of similarity. However this does not adequately capture semantics in our targeted domains, having graphical representations depicting results of scientific experiments. It is seldom known a-priori what other distance metric best preserves semantics. This motivates the need to learn such a metric. A technique called LearnMet is proposed here to learn a domain-specific distance metric for graphical representations. Input to LearnMet is a training set of correct clusters of such graphs. LearnMet iteratively compares these correct clusters with those obtained from an arbitrary but fixed clustering algorithm. In the first iteration a guessed metric is used for clus...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Distance functions are an important component in many learning applications. However, the correct fu...
Methods of data analysis and automatic processing are treated as knowledge discovery. In many cases ...
In mining graphical data the default Euclidean distance is often used as a notion of similarity. How...
Scientific experimental results are often depicted as plots of functions to aid their visual analysi...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...
Finding an appropriate distance metric that accurately reflects the (dis)similarity between examples...
International audienceSimilarity between objects plays an important role in both human cognitive pro...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
The graph data structure offers a highly expressive way of representing many real-world constructs s...
The graph data structure offers a highly expressive way of representing many real-world constructs s...
A typical machine learning algorithm takes advantage of training data to discover patterns among obs...
An appropriate distance is an essential ingredient in various real-world learning tasks. Distance me...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Distance functions are an important component in many learning applications. However, the correct fu...
Methods of data analysis and automatic processing are treated as knowledge discovery. In many cases ...
In mining graphical data the default Euclidean distance is often used as a notion of similarity. How...
Scientific experimental results are often depicted as plots of functions to aid their visual analysi...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data ...
Many algorithms rely critically on being given a good metric over their inputs. For instance, data c...
Finding an appropriate distance metric that accurately reflects the (dis)similarity between examples...
International audienceSimilarity between objects plays an important role in both human cognitive pro...
The need for appropriate ways to measure the distance or similarity between data is ubiquitous in ma...
Much like in other modeling disciplines does the distance metric used (a measure for dissimilarity) ...
The graph data structure offers a highly expressive way of representing many real-world constructs s...
The graph data structure offers a highly expressive way of representing many real-world constructs s...
A typical machine learning algorithm takes advantage of training data to discover patterns among obs...
An appropriate distance is an essential ingredient in various real-world learning tasks. Distance me...
The goal of machine learning is to build automated systems that can classify and recognize com-plex ...
Distance functions are an important component in many learning applications. However, the correct fu...
Methods of data analysis and automatic processing are treated as knowledge discovery. In many cases ...