From octave-sources-request at bevo dot che dot wisc dot edu Fri Nov 30 12:21:07 2001 Subject: Errorbar plotting functions for Octave From: Teemu Ikonen To: jwe at bevo dot che dot wisc dot edu, octave-sources@bevo.che.wisc.edu Cc: nils dot robbe at optimare dot de Date: Fri, 30 Nov 2001 20:20:58 +0200 --VbJkn9YxBvnuCH5J Content-Type: text/plain; charset=us-ascii Content-Disposition: inline I found out that the errorbar plotting functions distributed with latest Octave sources were a bit buggy. Attached are a new and improved versions of the functions. They contain functions for errorbar plotting on linear, semilog and logarithmic scales and can also be obtained from http://www.physics.helsinki.fi/~tpikonen/octave/ Teemu --VbJkn9YxBvnuCH5J Content-Type: application/x-tar-gz Content-Disposition: attachment; filename="errorbar-2001.11.30.tgz" Content-Transfer-Encoding: base64 H4sIAK7JBzwAA+w9bXPbNtL5Wv0KlJ7OSYmkEyVZbuzEYzeXtL5Lk4zjTJPp9DyUCMlsKFJH ULZ0Oee3P7uLF4IvkpzEdZ7ridNGBLhYLBaLxWIXgHmSxMnQS1rdTsdtu2671/nr+TlPklE8 nZ6ft6f3vvzpuJ3OoN+51+ngWx9/O25f/sKz2+/s3uvs9TvuXm/Q3esCPED37rHOLdS98ZmL 1EsYu5fOgvdxxKNVcIvEW4be8C5IustnZ4c9iWfLJJhcpKz+pMFQDtgZ59M5OyGG1HZ24D92 dhEINg5CzuB35iUpi8fs5Sj1LnlbgcgUfh8nnDMRj9MrL+EHbBnP2ciLWML9QKRJMJynAJYy L/L/GidsGvvBeAkZiGQe+Txh6QVnKU+mAmvBxI8v3rAfecQTL2Sv5sMwGLHnwYhHgjMP6MEc ccF9NlwiEizxDGl4rWhgz2JA7KVBHB0wHsD3hF3yRECadZsMiKh7KdKZsHiGUA1E40VLFnpp BltuadYgnwURVXwRz4D4C8AHTbwKwpANOZsLPp6HTQaQiOCXk7OfXr45Y8cv3rFfjk9Pj1+c vTsA4PQinqeMX3KJKpjOwgAwQxMSL0qXwA0s/fPT0yc/QZHjH06en5y9Q/KfnZy9ePr6NXv2 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