Recent Updates
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Updated on: Nov 01, 2024
Proximity Searching And The Percent (%) Wild Card
Proximity searching is a basic technique you need to learn to find one term within a certain number of words of another search term.
Basic Syntax:
To do a proximity search, put your terms in quotation marks then add the tilde ( ~ ) character, then the maximum number of terms between the two or more terms you want to search.
"Toilet Seat"~3 --> Finds the "Toilet" and "Seat" within three terms of each other.
"Toilet Seat Cover"~5 --> Finds the the terms "toilet" and "seat" within 5 words of each other, and "Seat" and "Cover" also within 5 words of each other.
You can use as many terms as you wish in your proximity searches. As a general rule, use 2 to 4 to find the terms within the same phrase, 7 to 15 to find them in the same sentence, and 15 to about 25 to find the terms in the same paragraph or claim. Of course the distances are cumulative, a search with six terms within five words of each other can span up to 30 terms.
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Updated on: Oct 24, 2024
Saving Searches
If you work on a specific search query, you'll want to save it so you can use it again in the future. AcclaimIP supports a feature where you can save searches for easy recall later.
I personally use the feature to save all my base queries. A base query is a search that contains all the keywords and strings that describe one specific aspect of an invention. I strongly recommend you build a library of relevant base queries, and save them to a folder called "Base Queries." In this example, I expose my NFC base query. I use this as my starting point when searching any technology related to NFC (Near Field Communications), and I never have to research all the terms which mean "NFC;" I just load my saved search.
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Updated on: Oct 24, 2024
Sharing Research Folders
Research folders may be shared between other AcclaimIP users on your team. You can also invite external AcclaimIP users to share folders with you are your team.
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Updated on: Sep 25, 2024
Overview And Direct SSO Access To AcclaimIP
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Updated on: Sep 25, 2024
Find Similar In AQX
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Updated on: Sep 25, 2024
IP Strategy Dashboards
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Updated on: Sep 25, 2024
The Analytics Button
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Updated on: Jul 17, 2024
Setting Up IP Strategy Dashboards
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Updated on: Mar 15, 2024
The Keyword Analysis Tools
AcclaimIP offers four tools for analyzing keywords in patents.
- Keyword Counter --> Counts the frequency of occurrence of terms and strings in a single patent and provides tools to construct queries.
- QueryFlow TermExtract --> Ranks the "importance" of terms using a TF/IDF algorithm and helps construct weighted queries.
- QueryFlow TermExtract for Multiple Patents --> Counts important terms from a set of up to 10 different patents, counts intersections, and constructs weighted queries.
- Document Clustering --> Document clustering bundles patents into multi-tier themes from a set of up to 1000 patents.
Manual ACCLAIMIP HELP MANUAL -
Updated on: Mar 15, 2024
Find Similar Advanced Keyword Analysis Tool (Multiple Documents)
The QueryFlow tool differs from the Keyword Analyzer in several ways:
- QueryFlow uses a powerful algorithm called TF/IDF (Term Frequency/Inverse Document Frequency) to find "important" terms in the source document.
- QueryFlow defaults to a Boolean OR operator compared to the Boolean AND in the Keyword Tool.
- Terms are weighted using Query Flow.
An "important" term is defined as a term that appears in the patent with a high frequency but does not appear very often in the entire patent corpus. As a result, TF/IDF doesn't need stop terms. Terms like the, and, but, with etc appear so often in the corpus that they are never identified as "important" terms. Even "patentese" terms such as method, apparatus, system appear so frequently in patent data that the algorithm never deems them "important."
Because of the weighting, and the nature of the Boolean OR operator, QueryFlow does a much better job of creating inclusive lists. But the list can be very large. The most relevant patents will be displayed at the top of the search result list.
Term weighting boosts a term's relevance in the search results and increases the overall precision of your query. Patents with higher weighted terms appear higher in the search results. Weighting terms does NOT impact the recall, which means the same number of documents will be returned by the search engine no matter what weighting you use. But the order in which they appear will be affected.
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