Fitting Time Series Models for Prediction Fitting Time Series Models for Prediction

نویسنده

  • William S. Cleveland
چکیده

This research was supported by the Army, Navy, Air Force and NASA under a contract. administered by the Office of Naval Research, with Yale University; by the National Science Foundation under Grant GU-2059 and the Air Force Office of Scientific Research under Contract AFOSR-68-l4l5 with the University of North Carolina at Chapel Hill. ** The major portion of the research for this paper was done while the author was at the Department of Statistics, Yale University.

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تاریخ انتشار 1970