Title :
Learning functions using randomized genetic code-like transformations: probabilistic properties and experimentations
Author :
Kargupta, Hillol ; Ayyagari, Rajeev ; Ghosh, Samiran
Author_Institution :
Dept. of Comput. Sci. & Electr. Eng., Maryland Univ., Baltimore, MD, USA
Abstract :
Inductive learning of nonlinear functions plays an important role in constructing predictive models and classifiers from data. We explore a novel randomized approach to construct linear representations of nonlinear functions proposed elsewhere [H. Kargupta (2001)], [H. Kargupta et al., (2002)]. This approach makes use of randomized codebooks, called the genetic code-like transformations (GCTs) for constructing an approximately linear representation of a nonlinear target function. We first derive some of the results presented elsewhere [H. Kargupta et al., (2002)] in a more general context. Next, it investigates different probabilistic and limit properties of GCTs. It also presents several experimental results to demonstrate the potential of this approach.
Keywords :
biology computing; function approximation; genetics; learning by example; nonlinear functions; optimisation; perceptrons; inductive learning; nonlinear functions; predictive classifiers; predictive models; probability; randomized codebooks; randomized genetic code-like transformations; Data mining; Genetics; Linear approximation; Machine learning; Notice of Violation; Organisms; Pattern recognition; Predictive models; Statistics; Support vector machines; 65; Inductive function learning; genetic code-like transformations; randomized transformations.; representation construction;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2004.27