2020
DOI: 10.1016/j.jss.2019.110426
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hW-inference: A heuristic approach to retrieve models through black box testing

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Cited by 10 publications
(15 citation statements)
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“…In this way, we can avoid logical errors due to excessive input parameters, and we can also avoid operational errors due to excessive input parameters. Black-box testing is to detect whether there are bugs in the internal code of the software or to check the integrity and correctness of the data when it is running [ 14 ]. Black-box testing is an effective way to improve system performance, reduce risk, and improve software functionality.…”
Section: Testing Results Of the Legal Information Retrieval Systemmentioning
confidence: 99%
“…In this way, we can avoid logical errors due to excessive input parameters, and we can also avoid operational errors due to excessive input parameters. Black-box testing is to detect whether there are bugs in the internal code of the software or to check the integrity and correctness of the data when it is running [ 14 ]. Black-box testing is an effective way to improve system performance, reduce risk, and improve software functionality.…”
Section: Testing Results Of the Legal Information Retrieval Systemmentioning
confidence: 99%
“…Its modular design provides a solid basis for experimentation with new learning algorithms, equivalence oracles, and counterexample processing. In future, we intend to extend these functionalities, with SAT-based learning [15] and learning without reset [14]. We hope that the community will recognize AALpy as an attractive foundation for further research, and welcome suggestions and extensions.…”
Section: Discussionmentioning
confidence: 99%
“…Within the context of model inference, the active learning approach depends on a communication channel with the system so that interacting and testing it to learn its behavior is possible, which generates costs for its preparation and execution, besides there are situations in which such communication is not possible (BOLLIG et al, 2009;GROZ et al, 2020). Another possibility is passive model inference, which does not require access to the system since it is executed based on a finite set of examples of the system's behavior, which can be positive or negative examples.…”
Section: Contextualizationmentioning
confidence: 99%