Decision trees are simple, yet powerful, classification models used to classify categorical and numerical data, and, despite their simplicity, they are commonly used in operations research and management, as well as in knowledge mining. From a logical point of view, a decision tree can be seen as a structured set of logical rules written in propositional logic. Since knowledge mining is rapidly evolving towards temporal knowledge mining, and since in many cases temporal information is best described by interval temporal logics, propositional logic decision trees may evolve towards interval temporal logic decision trees. In this paper, we define the problem of interval temporal logic decision tree learning, and propose a solution that generalizes classical decision tree learning.

Brunello, A., Sciavicco, G., Stan, I. (2019). Interval Temporal Logic Decision Tree Learning. In Logics in Artificial Intelligence 16th European Conference, JELIA 2019, Rende, Italy, May 7–11, 2019, Proceedings (pp.778-793). Springer Verlag [10.1007/978-3-030-19570-0_50].

Interval Temporal Logic Decision Tree Learning

Stan, IE
2019

Abstract

Decision trees are simple, yet powerful, classification models used to classify categorical and numerical data, and, despite their simplicity, they are commonly used in operations research and management, as well as in knowledge mining. From a logical point of view, a decision tree can be seen as a structured set of logical rules written in propositional logic. Since knowledge mining is rapidly evolving towards temporal knowledge mining, and since in many cases temporal information is best described by interval temporal logics, propositional logic decision trees may evolve towards interval temporal logic decision trees. In this paper, we define the problem of interval temporal logic decision tree learning, and propose a solution that generalizes classical decision tree learning.
paper
Decision trees; Interval temporal logics; Symbolic learning;
English
16th European Conference on Logics in Artificial Intelligence, JELIA 2019 - May 7–11, 2019
2019
Calimeri, F; Leone, N; Manna, M
Logics in Artificial Intelligence 16th European Conference, JELIA 2019, Rende, Italy, May 7–11, 2019, Proceedings
9783030195694
2019
11468 LNCS
778
793
https://link.springer.com/chapter/10.1007/978-3-030-19570-0_50
reserved
Brunello, A., Sciavicco, G., Stan, I. (2019). Interval Temporal Logic Decision Tree Learning. In Logics in Artificial Intelligence 16th European Conference, JELIA 2019, Rende, Italy, May 7–11, 2019, Proceedings (pp.778-793). Springer Verlag [10.1007/978-3-030-19570-0_50].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/524156
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