This course will cover many topics on pattern recognition (PR), artificial neural networks (ANN), and machine learning (ML). Pattern recognition is a classical research area that deals with recognizing patterns (objects) based on their features (traits or appearance). It has seen wide applications in speech recognition, image analysis, target detection, optical character recognition, fingerprint identification, face recognition, dating services, insurance fraud detection, DNA sequence alignment, protein structure matching, data mining, network intrusion detection, engine trouble shooting, healthcare, among many others. Artificial neural networks provide a general computing framework which is purported to be highly parallel, distributed, and fault tolerant. Machine learning deals with algorithms and formulations that enable a machine to learn and improve its performance from experience, that is, to modify its behaviors and execution on the basis of acquired information and data analysis. These areas share a lot of commonality in addressing similar problems in classification and clustering and are in high demands in the Web-centric era. You should consider concepts and algorithms presented in the class as general mathematic tools which hopefully will enrich your math "toolbox" and may become handy someday.
 
Quarter
          
      Faculty Reference
          Yuan-Fang Wang
              Course Type
              
          Course Area
              Applications
          Enrollment Code
              8995
          Location
              Phelp 2510
          Units
              4
          Day and Time
              TR 100-250
          Course Description