You have to append the training data with your custom data and
then train a model on the extended training data file.
Jörn
On 11/05/2014 07:56 AM, Rodrigo Agerri wrote:
Hi Patrick,
You cannot append to an existing model but you can train chunker
models for English with the CoNLL 2000 data.
http://www.clips.uantwerpen.be/conll2000/chunking/
R
On Mon, Nov 3, 2014 at 9:13 PM, <[email protected]> wrote:
Hello all,
Thanks for all of the support so far! Now, I would like train a chunker model
to recognize domain-specific terms and group them. However, I don't really have
comprehensive corpus that deals with the rest of the English language - just
the particular cases that I'm interested in. I thought it might be better to
merely augment the existing chunker model. Is there a way to append to an
existing model or perhaps append my training data to a chunking corpus and then
train that? Has anyone tried extending the existing model - and if so, what was
done?
Patrick Baggett
Online Engineer - Search Team
e: [email protected]<mailto:[email protected]>
p: +1 (214) 202-8964
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