Editing Mika/Temp/WikiFCD/Grants

From WikiDotMako

Warning: You are not logged in. Your IP address will be publicly visible if you make any edits. If you log in or create an account, your edits will be attributed to your username, along with other benefits.

The edit can be undone. Please check the comparison below to verify that this is what you want to do, and then publish the changes below to finish undoing the edit.

Latest revision Your text
Line 90: Line 90:
       wbt:P31 [wb:Q127865]
       wbt:P31 [wb:Q127865]
}</code>
}</code>
These ShEx schemas will also reduce work for anyone looking to combine data from our knowledge graph with other data sets. For example, if researchers would like to explore our data, rather than writing exploratory SPARQL queries to find out what data can be found and the details of our data models, they can simply review our ShEx schemas to quickly understand our data models.
* Validating RDF Graphs
* Validating RDF Graphs
ShEx can be used to validate RDF graphs for conformance to a schema. This allows us to create forms for data contributors that will ensure data consistency. Data contributors will not need to familiarize themselves with our data models, the form-based contribution interaction will guide curation.
ShEx can be used to validate RDF graphs for conformance to a schema. This allows us to create forms for data contributors that will ensure data consistency. Data contributors will not need to familiarize themselves with our data models, the form-based contribution interaction will guide curation.
Line 115: Line 112:


The knowledge graph approach allows us to combine food composition data and recipes in the same database, which will enable us to create novel user interfaces for people interested in the nutritional components of home-cooked dishes.
The knowledge graph approach allows us to combine food composition data and recipes in the same database, which will enable us to create novel user interfaces for people interested in the nutritional components of home-cooked dishes.
The knowledge graph approach also facilitates expansion of this project into related domains. We could look at food chemistry and metabolic processes by combining this with subsets of Wikidata. We could combine this data with research literature about health benefits of plant-derived medicines and extend our data models to include plant components that have been tested for medicinal efficacy.


The ability to federate SPARQL queries between our Wikibase and Wikidata allows us to combine our data with resources from the media repository of the Wikimedia Foundation, Wikimedia Commons. The ability to quickly locate images, videos and sound files related to the resources in our Wikibase allows us to provide interactive multi-media interactions in applications we build on top of our Wikibase. Wikimedia Commons has images of many of the taxa of which our food items are products.  
The ability to federate SPARQL queries between our Wikibase and Wikidata allows us to combine our data with resources from the media repository of the Wikimedia Foundation, Wikimedia Commons. The ability to quickly locate images, videos and sound files related to the resources in our Wikibase allows us to provide interactive multi-media interactions in applications we build on top of our Wikibase. Wikimedia Commons has images of many of the taxa of which our food items are products.  
Please note that all contributions to WikiDotMako are considered to be released under the Attribution-Share Alike 3.0 Unported (see WikiDotMako:Copyrights for details). If you do not want your writing to be edited mercilessly and redistributed at will, then do not submit it here.
You are also promising us that you wrote this yourself, or copied it from a public domain or similar free resource. Do not submit copyrighted work without permission!

To protect the wiki against automated edit spam, we kindly ask you to solve the following CAPTCHA:

Cancel Editing help (opens in new window)