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A model to add punctuation marks to arabic text #12

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MagedSaeed opened this issue Jun 8, 2019 · 4 comments
Open

A model to add punctuation marks to arabic text #12

MagedSaeed opened this issue Jun 8, 2019 · 4 comments
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good first issue Good for newcomers help wanted Extra attention is needed

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@MagedSaeed
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MagedSaeed commented Jun 8, 2019

The idea here is to use a machine learning model to automatically add punctuation marks to Arabic text. Those marks are as follows:

!
،
.
?
؛
:
- -
- 
/

I do not have a dataset for this. However, I think Tashkela dataset will be a good fit since it contains a large body of Arabic text that is mostly punctuated.
Any thoughts?

@MagedSaeed MagedSaeed added help wanted Extra attention is needed question Further information is requested labels Jun 8, 2019
@zaidalyafeai zaidalyafeai added good first issue Good for newcomers and removed question Further information is requested labels Jun 8, 2019
@ZarahShibli
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I worked on a project idea similar to this one. For more details about it, you can see this article
https://medium.com/@ZarahShibli/what-comes-after-the-word-61c5adc9b8a0

@zaidalyafeai
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@ZaraahShibli Tell us if you are interested in adding the model here.

@ZarahShibli
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Sure, I'm interested.

@zaidalyafeai
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@ZaraahShibli our process is a little bit lengthy, so if you need any help let me know.

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