A Review Of Progress for Component Based Software Cost Estimation From
1965 to 2023
- URL: http://arxiv.org/abs/2306.03971v1
- Date: Tue, 6 Jun 2023 19:09:08 GMT
- Title: A Review Of Progress for Component Based Software Cost Estimation From
1965 to 2023
- Authors: Muhammad Nadeem, Humaira Afzal, Muhammad. Idrees, Sajid Iqbal, M.
Rafiq Asim
- Abstract summary: Component Based Software Cost Estimation (CBSCE) is an important pre-development activity for the successful planning and cost estimation of Components-Based Software Development (CBSD)
This paper may also serve as a common source of information for the concerned researchers.
- Score: 1.0374615809135401
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Component Based Software Engineering (CBSE) is used to develop software from
Commercial Off the Shelf Components (COTs) with minimum cost and time.
Component Based Software Cost Estimation (CBSCE) is an important
pre-development activity for the successful planning and cost estimation of
Components-Based Software Development (CBSD) that saves cost and time. Many
researchers are putting their efforts to propose and then develop a CBSCE
model. This motivates to review research work and history of CBSCE from 1965 to
2023. The scope of this research also, to some extent, includes auxiliary the
review of all the research work done in the areas such as CBSE, CBSCE,
Component Based Software Metrics, COTs, component based process models to cover
all the areas of CBSD under CBSE either to answer or to provide pointers for
the answers to the questions of this area easily. Internet based search
methodology has been used to review the available and published literature.
This paper may also classify available literature of this area into its sub
areas such as component selection, quality with chronological contribution of
the researchers and pictorial presentation of its history. Thus this research
paper may serve as a common source of information for the concerned
researchers.
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