Wikipedia:GLAM/HarvardLibrary/Wikidata-resources

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Welcome to Wikidata edit

What is Wikidata? edit

 
Overview of Wikidata

Wikidata is a free and open knowledge base that can be read and edited by both humans and machines.

Wikidata sits like a spider in the net between various databases for normalized data. It provides links to these and the quantity of links varies between the entries.

How is Wikidata used? edit

Wikidata is part of the semantic web and facilitates queries. They can be anything like “Give me all the Natural History museums in the UK”, or “Give me contemporary architects who have worked in Argentina”. Often digital humanities projects link their data to Wikidata to augment their own data sets and applications.

Adding items to Wikidata and adding statements to item descriptions makes the results of these queries more accurate and useful. Many entries in Wikidata, however, only provide some basic information. Therefore, it would be extremely useful to enrich the data entries with as much as we know about them.

Contributing to Wikidata edit

There are many ways to contribute to Wikidata. Here we'll focus on starting points for new users:

  • Improve existing Wikidata item descriptions
  • Create new items
  • Play “games” to add individual statements without starting from scratch
  • Find a WikiProject to join

If you haven't edited Wikidata before, look at some of the following introductory materials and tutorials to get oriented.

Getting Started edit

Places to start editing edit

Here are some resources to start with:

Describing persons edit

Wikidata has a multitude of references. A person’s entry may have several occupations, work places, work creations, references to normed data, etc. See for a complex (yet not complete entry) the Renaissance architect Francesco di Giorgio.

Entries like this have a complete set of links to normed data, but what is still missing, for example, are the works an artist had created, and the museums where they can be situated. In Wikidata there hardly are any “complete” entries.

You can look for:

  • Artists (for example those in the Harvard Art Museum)
  • Donors (especially donors of Harvard)
  • Authors and their works
  • Others

Adding Data edit

You can...

  • Open existing datasets and simply add more information to them. Video Walk-Through
  • Decide to add by yourself or collaboratively complex datasets.
  • Create Wikidata without having to select properties on their own (or consult documentation for that) using our form.

Generating Queries for Wikidata edit

There are two ways to generate Queries for Wikidata:

Using data generated from SPARQL Queries to help researchers edit

Make visualizations, for example:

 
A well-known Wikidata knowledge graph about the Portrait of Madame X

Refine it further or link it to your existing projects using one of many Wikidata-powered tools, for example:

Frances Loeb Library, Harvard University

Resources edit

Gadgets edit

Sign in to Wikidata before making edits. This allows you to adjust your account’s preferences to turn on helpful features and tools.

  • Preview: if you’re adding facts from a Wikipedia article to to a Wikidata item, turn this gadget on to see the beginning of the Wikipedia article conveniently displayed in the same browser tab.
  • DuplicateReferences: turn this on to reduce mouse clicks and keystrokes when adding the same citation to multiple statements in a Wikidata item.
  • EasyQuery: generates queries that can help with editing in a variety of ways without requiring knowledge of SPARQL query language. For example, if you’re replacing an author name string with a link to the author’s Wikidata item, you can use this to see if there are other items that might need the same edit.
  • Recoin: when editing a Wikidata item, this helps to answer questions like “where do I start?” or “what else needs to be said about this thing?” by providing a list of properties to consider using, based on how they’ve been used to describe similar items.

Articles edit