DocumentCode
2649934
Title
Effort Prediction Models Using Self-Organizing Maps for Embedded Software Development Projects
Author
Iwata, Kazunori ; Nakashima, Toyoshiro ; Anan, Yoshiyuki ; Ishii, Naohiro
Author_Institution
Dept. of Bus. Adm., Aichi Univ., Miyoshi, Japan
fYear
2011
fDate
7-9 Nov. 2011
Firstpage
142
Lastpage
147
Abstract
In this paper, we create effort prediction models using self-organizing maps (SOMs) for embedded software development projects. SOMs are a type of artificial neural networks that rely on unsupervised learning. They produce a low-dimensional, discretized representation of the input space of training samples, these representations are called maps. SOMs are useful for visualizing low-dimensional views of high-dimensional data a multidimensional scaling technique. The advantages of using SOMs for statistical applications are as follows: (1) enabling reasonable inferences to be made from incomplete information via association and recollection, (2) visualizing data, (3) summarizing large-scale data, and (4) creating nonlinear models. We focus on the first advantage to create effort prediction models. To verify our approach, we perform an evaluation experiment that compares SOM models to feed forward artificial neural network (FANN) models using Welch´s t test. The results of the comparison indicate that SOM models are more accurate than FANN models for the mean of absolute errors when predicting the amount of effort, because mean errors of the SOM are statistically significantly lower.
Keywords
data visualisation; project management; self-organising feature maps; software development management; statistical testing; unsupervised learning; Welch t test; artificial neural network; data visualization; discretized representation; effort prediction model; embedded software development project; high-dimensional data; large-scale data summarization; low-dimensional view visualization; mean errors; multidimensional scaling technique; nonlinear model; self-organizing maps; unsupervised learning; Accuracy; Data models; Embedded software; Mathematical model; Predictive models; Self organizing feature maps; Vectors; effort prediction; embedded software development projects; self-organizing maps;
fLanguage
English
Publisher
ieee
Conference_Titel
Tools with Artificial Intelligence (ICTAI), 2011 23rd IEEE International Conference on
Conference_Location
Boca Raton, FL
ISSN
1082-3409
Print_ISBN
978-1-4577-2068-0
Electronic_ISBN
1082-3409
Type
conf
DOI
10.1109/ICTAI.2011.30
Filename
6103319
Link To Document