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872 bytes added ,  13:47, 21 September 2020
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{{Project|Has project output=Tool|Has sponsor=McNair ProjectsCenter
|Has title=Demo Day Page Parser
|Has owner=Peter Jalbert,
|Has project status=ActiveSubsume
}}
 
==Project Specs==
The goal of this project is to leverage data mining with Selenium and Machine Learning to get good candidate web pages for Demo Days for accelerators. Relevant information on the project can be found on the [http://mcnair.bakerinstitute.org/wiki/Accelerator_Data Accelerator Data] page.
ListOfAccs.txt
The full list of potential keywords (used for throwing out irrelevant results)search terms to match with the text versions of news articles: KeywordsCohortAndAcceleratorsFullList.txt
A list of accelerators, queries, and urls:
A file with the name of the results that passed keyword matching:
DemoDayHitsFull.txt
 
A file with an analysis of the most frequent matched words in each text file:
topWordsFull.txt
==Faulty Results==
the, L-Spark
Matter, This., [https://matter.vc/portfolio/this/ website]
Fledge, HERE, [http://fledge.co/fledgling/here/ website]
StartupBootCamp, We...
L-Spark, Company
After Techstars, Hot Rather than removing these companies from consideration the list of search terms, we opted to not include as keywordssearch terms any words that were considered among the top 10000 most common English words. For reference, we used the top 10000 most common English words according to a Google research study. The github documentation of the study can be found [https://github.com/first20hours/google-10000-english here]. The file containing the 10000 most common English words can be found: E:\McNair\Software\Accelerators\10000_common_words.txt The results seemed much more plausible after removing these words. Some company words still appeared many times,but in the correct context.

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