International audienceExploratory data analysis is an open-ended iterative process, where the goal is to discover new insights. Much of the work to characterise this exploration stems from qualitative research resulting in rich findings, task taxonomies, and conceptual models. In this work, we propose a machine-learning approach where the structure of an exploratory analysis session is automatically learned. Our method, based on Hidden-Markov Models, automatically builds a storyline of past exploration from log data events, that shows key analysis scenarios and the transitions between analysts' hypotheses and research questions. Compared to a clustering method, this approach yields higher accuracy for detecting transitions between analysis ...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...
Artificial intelligence, genetic algorithm, knowledge discovery, pattern recognition, Abstract � We ...
With the proliferation of sensor data, a critical challenge is to interpret and extract knowledge fr...
International audienceExploratory data analysis is an open-ended iterative process, where the goal i...
Brief outlines of exploratory analysis methods (analysis designed to develop hypotheses) from three ...
International audienceVisualization techniques are useful tools to explore data by enabling the disc...
International audienceDiscovering temporal patterns hidden in a sequence of events has applications ...
Exploratory data analysis (EDA) is sometimes suggested as a hypothesis identification approach. It i...
Event structures are central in Linguistics and Artificial Intelligence research: people can easily ...
Event structures are central in Linguistics and Artificial Intelligence research: people can easily ...
Today there are quite a few widespread misconceptions of exploratory data analysis (EDA). One of the...
To develop an initial understanding of complex data, one often begins with exploration. Exploratory ...
Exploratory data analysis (EDA) has come to play an increasingly important role in statistical analy...
Part 5: Machine Learning - Regression - ClassificationInternational audienceActivity discovery is a ...
In this paper, we present a technique that we have developed to transform sequences of technical eve...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...
Artificial intelligence, genetic algorithm, knowledge discovery, pattern recognition, Abstract � We ...
With the proliferation of sensor data, a critical challenge is to interpret and extract knowledge fr...
International audienceExploratory data analysis is an open-ended iterative process, where the goal i...
Brief outlines of exploratory analysis methods (analysis designed to develop hypotheses) from three ...
International audienceVisualization techniques are useful tools to explore data by enabling the disc...
International audienceDiscovering temporal patterns hidden in a sequence of events has applications ...
Exploratory data analysis (EDA) is sometimes suggested as a hypothesis identification approach. It i...
Event structures are central in Linguistics and Artificial Intelligence research: people can easily ...
Event structures are central in Linguistics and Artificial Intelligence research: people can easily ...
Today there are quite a few widespread misconceptions of exploratory data analysis (EDA). One of the...
To develop an initial understanding of complex data, one often begins with exploration. Exploratory ...
Exploratory data analysis (EDA) has come to play an increasingly important role in statistical analy...
Part 5: Machine Learning - Regression - ClassificationInternational audienceActivity discovery is a ...
In this paper, we present a technique that we have developed to transform sequences of technical eve...
International audienceThis paper deals with the exploration of biomedical multivariate time series t...
Artificial intelligence, genetic algorithm, knowledge discovery, pattern recognition, Abstract � We ...
With the proliferation of sensor data, a critical challenge is to interpret and extract knowledge fr...