An Improved Cost Estimation in Software Project Development Using Neural Networks and COCOMOII model

Abstract

An sympathetic of quality aspects is relevant for the software association to deliver high software dependability. An empirical consideration of metrics to prophesy the quality attributes is basic in order to acquire insight about the value of software in the primitive phases of software development and to certify corrective actions. Herein paper, we forecast a model to assess fault proneness via Object Oriented CK metrics and QMOOD metrics. We pertain one statistical method and six machine learning technique to predict the models. The proposed reproduction are validated using dataset unruffled from Open Source software. The consequences are analyzed using Area Under the Curve (AUC) achieve from Receiver Operating Characteristics (ROC) testing. The results show that the replica predicted using the random forest and bagging methods outperformed all the other mould. Hence, support on these results it is equitable to claim that quality models have a considerable relevance with Object Oriented metrics and that machine learning organizations have a equivalent performance with numerical methods. It is experimental that the CBR routine using the Mahalanobis detachment similarity occupation moreover the inverse distance weighted solution algorithm yielded the best fault prediction. In addition, the CBR models have superior performance than models basis on multiple linear regression.

Authors and Affiliations

Archana. R| Student of M.Tech (CSE) and Department of Computer Science Engineering, AITAM, Tekkali, Srikakulam, Ravikumar. T| Asst.Prof in Department of Computer Science Engineering, AITAM, Tekkali, Srikakulam

Keywords

Related Articles

A Secure Protocol for M-commerce Secure SMS Mobile Payment

The worldwide utilization of the Internet has profoundly supplied the development of e-commerce. Technological advancement in mobile phones (e.g. Mobile phones) has likewise added to doing ecommerce by means of mobile...

Sensor networks are utilized as a part of various application spaces, for example, digital physical framework frameworks, natural checking, control lattices, and so on. Information are created at an extensive number...

Analysis Of Reranking Techniques For Web Image Search With Attribute –Assisted

Many commercial search engines such as Google, Yahoo and Bing have been adopted this strategy. The search engines are mostly based on text and constrained due to user search by keyword which results into ambiguity am...

A Novel Optimal routing using Hop-by-Hop Adaptive linking

I am presenting the first of its kind project, the first link-state routing solution carrying traffic through packetswitched networks. At each node, for every other node, the algorithm independently and iteratively upd...

A Novel Auditing Scheme And Efficient Data Repairing Process In Multiple Clouds

We propose an public auditing system for the recovering code-based distributed storage. To answer the recovery issue of fizzled authenticators in the nonattendance of information proprietors, we show an intermediary,...

Download PDF file
  • EP ID EP16489
  • DOI -
  • Views 314
  • Downloads 14

How To Cite

Archana. R, Ravikumar. T (2015). An Improved Cost Estimation in Software Project Development Using Neural Networks and COCOMOII model. International Journal of Science Engineering and Advance Technology, 3(4), 143-146. https://europub.co.uk/articles/-A-16489