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Viterbi, Andrew, “Error Bounds for Convolutional Codes”, IEEE Transactions on Information Theory, Apr. 1967, pp. 260-269, USA. Expert, Economic, “Viterbi Algorithm”, www.economicexpert.com, Jul. 19, 2011, pp. 1-2, USA.

Hauser, John and Urban, Glen, “Assessment of attribute importances and consumer utility functions”, Journal of Consumer Research, p. 251-262, Mar. 1979, USA.

Lu, Zhidong, et al., “A robust language independent OCR system”, 1998, pp. 1-9, BBN Technologies, USA.

Englebrecht, Herman, “Efficient decoding of hidden markov models”, Sep. 2007, pp. 1-151, University of Stellenbosch, South Africa. Chen, Peter, “The Entity Relationship Model”, Mar. 1976, pp. 9-36, ACM Transactions on Database Systems, USA.

Link, Jonathan, “Addendum to petition for relief for U.S. Appl. No. 11/360,087”, Aug. 31, 2011, pp. 1-52, Kilpatrick Townsend, U.S.A. Someren, Maarten, Verdeneus, Floor; “Introducing inductive methods in knowledge acquisition by divide-and-conquer”, 1998, pp. 20-28, AAAI, USA.

Geman, Stuart, Bienenstock, Elie; “Neural networks and the bias/ variance dilemma”, 1992, Neural Computation, pp. 1-58, MIT, USA.

Schuurmans, Dale; “A new metric based approach to model selection”, 1997, pp. 1-7, AAAI National Conference Proceedings, AAAI, USA

Kohavi, Ron, “Wrappers for feature subset selection”, 1997, Artificial Intelligence, pp. 273-324, Elsevier, Holland.

Michalski, Ryzard, “A theory and methodology of inductive learning”, 1982, pp. 111-161, Tioga Publishing, USA.

Mitchell, Tom, “Machine Learning”, 1997, pp. 1-414, McGraw Hill, USA.

Piramuthu, Selwyn, et al, “Using Feature Construction to Improve the Performance of Neural Networks”, 1998, pp. 416-430, Management Science, USA.

Kohavi, Ron; “Wrappers for performance enhancement and oblivious decision graphs”; 1995, pp. 1-302, Stanford University, USA. Kira, Kenji, Rendell, Larry, “The feature selection problem, traditional methods and a new algorithm”, 1992, pp. 129-134, Learning Inductive, AAAI, USA.

Jordan, Michael, Jacobs, Robert, “Hierarchical Mixtures of Experts and the EM Algorithm”, 1993, pp. 1-30, MIT, USA.

* cited by examiner

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