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<title>Ask Ghassem - Recent questions tagged score</title>
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<title>How to model unknown yet data</title>
<link>https://ask.ghassem.com/943/how-to-model-unknown-yet-data</link>
<description>&lt;p&gt;So far, I have modeled on known historical data. What if there are variables known only after the fact?&lt;br&gt;
Let me give you an example. I want to predict the outcome of the match, win, lose or draw. I use variables from previous games such as ball possession, number of shots, corners, etc. Let&#039;s say the Chelsea-Arsenal game is approaching Saturday. How am I supposed to build a model and predict the result if this data is not yet available for my event? What to do in such cases, is it possible to forecast such data?&lt;/p&gt;

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<category>Machine Learning</category>
<guid isPermaLink="true">https://ask.ghassem.com/943/how-to-model-unknown-yet-data</guid>
<pubDate>Tue, 27 Oct 2020 10:39:47 +0000</pubDate>
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