ChaosNet is a type of artificial neural network framework developed for
classification problems and is influenced by the chaotic property of the human
brain. Each neuron of the ChaosNet architecture is the one-dimensional chaotic
map called the Generalized Luroth Series (GLS). The addition of GLS as neurons
in ChaosNet makes the computations straightforward while utilizing the
advantageous elements of chaos. With substantially less data, ChaosNet has been
demonstrated to do difficult classification problems on par with or better than
traditional ANNs. In this paper, we use Chaosnet to perform a functional
classification of Hypothetical proteins [HP], which is indeed a topic of great
interest in bioinformatics. The results obtained with significantly lesser
training data are compared with the standard machine learning techniques used
in the literature