Knowledge extraction has traditionally represented one of the most interesting challenges in AI; in recent years, however, the availability of large collections of data has increased the awareness that “measuring” does not seamlessly translate into “understanding”, and that more data does not entail more knowledge. We propose here a formulation of knowledge extraction in terms of Grammatical Inference (GI), an inductive process able to select the best grammar consistent with the samples. The aim is to let models emerge from data themselves, while inference is turned into a search problem in the space of consistent grammars, induced by samples, given proper generalization operators. We will finally present an application to the extraction of structural models representing user mobility behaviors, based on public datasets.

Cottone, P., Gaglio, S., Lo Re, G., Ortolani, M., Pergola, G. (2016). Structural knowledge extraction from mobility data. In AIIA 2016: Advances in Artificial Intelligence (pp.294-307). Springer Verlag [10.1007/978-3-319-49130-1_22].

Structural knowledge extraction from mobility data

COTTONE, Pietro;GAGLIO, Salvatore;LO RE, Giuseppe;ORTOLANI, Marco;
2016-01-01

Abstract

Knowledge extraction has traditionally represented one of the most interesting challenges in AI; in recent years, however, the availability of large collections of data has increased the awareness that “measuring” does not seamlessly translate into “understanding”, and that more data does not entail more knowledge. We propose here a formulation of knowledge extraction in terms of Grammatical Inference (GI), an inductive process able to select the best grammar consistent with the samples. The aim is to let models emerge from data themselves, while inference is turned into a search problem in the space of consistent grammars, induced by samples, given proper generalization operators. We will finally present an application to the extraction of structural models representing user mobility behaviors, based on public datasets.
15th International Conference on Italian Association for Artificial Intelligence, AIIA 2016
Genova
2016
2016
14
Online
https://link.springer.com/chapter/10.1007%2F978-3-319-49130-1_22
Cottone, P., Gaglio, S., Lo Re, G., Ortolani, M., Pergola, G. (2016). Structural knowledge extraction from mobility data. In AIIA 2016: Advances in Artificial Intelligence (pp.294-307). Springer Verlag [10.1007/978-3-319-49130-1_22].
Proceedings (atti dei congressi)
Cottone, P.; Gaglio, S.; Lo Re, G.; Ortolani, M.; Pergola, G.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/219842
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