Using neural networks to analyse software complexity
                
    Field, S., Davey, N. and Frank, R.
  
(1995)
Using neural networks to analyse software complexity.
    [Report]
  
  
              
            
Units of software are represented as points in a multidimensional space, by calculating 12 measures of software complexity for each unit. To large sets of commercial software are thereby represented as 2236 and 4456 12-ary vectors respectively. These two sets of vectors are then clustered by a variety of competitive neural networks. It is found that the software does not fall into any simple set of clusters, but that a complex pattern of clustering emerges. These clusters give a view of the structural similarity of units of code in the data sets.
| Item Type | Report | 
|---|---|
| Date Deposited | 15 May 2025 15:59 | 
| Last Modified | 27 Aug 2025 23:02 | 
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