Difference between revisions of "Ravali Kruthiventi (Research Plan)"
Jump to navigation
Jump to search
Line 11: | Line 11: | ||
**Teams waiting for it: | **Teams waiting for it: | ||
*** Marcela and Amir | *** Marcela and Amir | ||
− | ****Project : Patent data analysis | + | ****Project : [[ Patent Data Wiki Page | Patent data analysis ]] |
***Jake and James, potentially could need this down the line | ***Jake and James, potentially could need this down the line | ||
− | ****Project : LBO data | + | ****Project :[[Leveraged Buyout Innovation (Academic Paper)| LBO data]] |
** Deadline: | ** Deadline: | ||
Revision as of 12:29, 15 July 2016
Contents
Project - USPTO Assignees, Patent and Citation Data
Assignees Data
- Data source: patent database (merged data from patent_2015 and patentdata databases)
- Issues: citations data contains non numeric patent numbers (likely application numbers, etc)
- Solution:
- Segregate into smaller tables so that Amir and Marcela can identify patterns
- link back to appropriate patent numbers from the patent table
- Time to implement: 1 day
- Priority:
- Teams waiting for it:
- Marcela and Amir
- Project : Patent data analysis
- Jake and James, potentially could need this down the line
- Project : LBO data
- Marcela and Amir
- Deadline:
- Data Source: USPTO Bulk Data repository
- Issues:
- The script inserts copies of data into the tables.
- Analysis required on the data to make sure the data was inserted correctly from the XML files.
- Analysis is also required to determine whether this data is better than the data we have in the patent database right now.
- Action owners : Amir and Marcela
- Solution:
- Amir and Marcela and/or I need to look at the data to determine quality
- Amir and Marcela and/or I will need to delete the copies
- Time to implement:
- Priority:
- Teams waiting for it:
- Deadline:
- Issues:
Project - Lex Machina Data
- Data Source:
- Issues:
- Solution:
- Time to implement:
- Priority:
- Teams waiting for it:
- Deadline:
Project - Pattern Recognition on Patent Data through Machine Learning
- Data Source:
- Plan:
- Technique
- Plan:
- Known Issues:
- Solution:
- Time to implement:
- Priority:
- Teams waiting for it:
- Deadline: