Title :
Software process improvement planning with neural networks
Author :
Haase, Volkmar H.
Author_Institution :
IICM/IST, Graz Univ. of Technol., Austria
Abstract :
Quality data about business processes in small software companies are analysed using neural network based tools. It is shown that this technology is powerful enough to: (a) identify “types” of businesses; (b) learn functions on overall performance dependent on specific quality parameters; and (c) identify “improvement steps”, i.e. which measures are most appropriate to achieve higher performance. In the application using sample data of 50+ business units, it was found that thorough inspection of early software life cycle phases contributes most to high performance. The method has been used officially in an analysis of the Swiss software industry, and it is possible to apply it to other types of business data
Keywords :
DP industry; business data processing; neural nets; software development management; software quality; Swiss software industry; business data; business processes; business units; early software life cycle phases; improvement steps; neural network based tools; neural networks; overall performance; quality data; quality parameters; sample data; small software companies; software process improvement planning; Application software; Appropriate technology; Companies; Computer industry; Inspection; Neural networks; Process planning; Software performance; Software quality; Software tools;
Conference_Titel :
Euromicro Conference, 1998. Proceedings. 24th
Conference_Location :
Vasteras
Print_ISBN :
0-8186-8646-4
DOI :
10.1109/EURMIC.1998.708106