« Volver Ficha del Documento

Modelo para la identificación de deuda técnica de documentación en ambientes de desarrollo de software ágiles

2017

Proyecto de Graduación (Maestría en Ingeniería en Computación) Instituto Tecnológico de Costa Rica, Escuela de Ingeniería en Computación, 2017.

This research is about a model that identifies and evaluates technical documentation debt in agile software development projects, using a Natural Language Processing (NLP) based tool called AQUSA+. The tool analyzes a set of user stories syntactically and pragmatically through their three main components: title, description and acceptance criteria. It allows the user to load a file and then display all the errors that need to be corrected in their textual composition, which may lead to technical debt accumulation. To validate the performance, AQUSA+ scores were compared to the ones of a set of experts, who used the same sample of user stories and the same evaluation rubric, in order to standardize the values of each quality criteria score. The final score for each evaluator was graphically displayed, in order to statistically compare it to the one from the tool. Also, a benchmark with a set of user stories with no errors was run on the tool to analyze any unexpected behavior. The evaluations and the benchmark allowed us to identify false positives, and thus to calculate the precision of the tool

Instituto Tecnológico de Costa Rica

Lidia Gómez

Cartago - 300m Este del Estadio Fello Meza. Apartado 159-7050.

2550-2263, 2550-2365


Dirección: Av. Mariscal Antonio José de Sucre N58-63 y Fernández Salvador Edif. Olade - San Carlos, Quito - Ecuador.

Web: www.olade.org

Teléfonos: (593 2) 259 8122 / 2598 280

Correo: realc@olade.org

ADMIN
Desarrollado por: Aikyu-Systems