SE3M: A Model for Software Effort Estimation Using Pre-trained Embedding Models

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Authors Eliane M. De Bortoli FΓ‘vero, Dalcimar Casanova, Andrey Ricardo Pimentel arXiv ID 2006.16831 Category cs.SE: Software Engineering Cross-listed cs.CL, cs.LG Citations 17 Venue Information and Software Technology Last Checked 4 months ago
Abstract
Estimating effort based on requirement texts presents many challenges, especially in obtaining viable features to infer effort. Aiming to explore a more effective technique for representing textual requirements to infer effort estimates by analogy, this paper proposes to evaluate the effectiveness of pre-trained embeddings models. For this, two embeddings approach, context-less and contextualized models are used. Generic pre-trained models for both approaches went through a fine-tuning process. The generated models were used as input in the applied deep learning architecture, with linear output. The results were very promising, realizing that pre-trained incorporation models can be used to estimate software effort based only on requirements texts. We highlight the results obtained to apply the pre-trained BERT model with fine-tuning in a single project repository, whose value is the Mean Absolute Error (MAE) is 4.25 and the standard deviation of only 0.17, which represents a result very positive when compared to similar works. The main advantages of the proposed estimation method are reliability, the possibility of generalization, speed, and low computational cost provided by the fine-tuning process, and the possibility to infer new or existing requirements.
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