Michele Tufano | College of William and Mary (original) (raw)
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Graduate Center of the City University of New York
Sher-e-Kashmir University of Agricultural Sciences and Technology (SKUAST)
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Papers by Michele Tufano
2015 IEEE/ACM 12th Working Conference on Mining Software Repositories, 2015
Code smells are symptoms of poor design and implementation choices that may hinder code comprehen... more Code smells are symptoms of poor design and implementation choices that may hinder code comprehension and possibly increase change-and fault-proneness of source code. Several techniques have been proposed in the literature for detecting code smells. These techniques are generally evaluated by comparing their accuracy on a set of detected candidate code smells against a manually-produced oracle. Unfortunately, such comprehensive sets of annotated code smells are not available in the literature with only few exceptions. In this paper we contribute (i) a dataset of 243 instances of five types of code smells identified from 20 open source software projects, (ii) a systematic procedure for validating code smell datasets, (iii) LANDFILL, a Web-based platform for sharing code smell datasets, and (iv) a set of APIs for programmatically accessing LANDFILL's contents. Anyone can contribute to Landfill by (i) improving existing datasets (e.g., adding missing instances of code smells, flagging possibly incorrectly classified instances), and (ii) sharing and posting new datasets. Landfill is available at www.sesa.unisa.it/landfill/, while the video demonstrating its features in action is available at
2015 IEEE/ACM 37th IEEE International Conference on Software Engineering, 2015
2015 IEEE/ACM 37th IEEE International Conference on Software Engineering, 2015
2015 IEEE/ACM 12th Working Conference on Mining Software Repositories, 2015
Code smells are symptoms of poor design and implementation choices that may hinder code comprehen... more Code smells are symptoms of poor design and implementation choices that may hinder code comprehension and possibly increase change-and fault-proneness of source code. Several techniques have been proposed in the literature for detecting code smells. These techniques are generally evaluated by comparing their accuracy on a set of detected candidate code smells against a manually-produced oracle. Unfortunately, such comprehensive sets of annotated code smells are not available in the literature with only few exceptions. In this paper we contribute (i) a dataset of 243 instances of five types of code smells identified from 20 open source software projects, (ii) a systematic procedure for validating code smell datasets, (iii) LANDFILL, a Web-based platform for sharing code smell datasets, and (iv) a set of APIs for programmatically accessing LANDFILL's contents. Anyone can contribute to Landfill by (i) improving existing datasets (e.g., adding missing instances of code smells, flagging possibly incorrectly classified instances), and (ii) sharing and posting new datasets. Landfill is available at www.sesa.unisa.it/landfill/, while the video demonstrating its features in action is available at
2015 IEEE/ACM 37th IEEE International Conference on Software Engineering, 2015
2015 IEEE/ACM 37th IEEE International Conference on Software Engineering, 2015