Readings: Difference between revisions

From info216
No edit summary
Line 95: Line 95:
* For example pages 54-55, 133 in Blumauer & Nagy (suggested)
* For example pages 54-55, 133 in Blumauer & Nagy (suggested)
* The [[:File:kg4news-dump-20230130.txt | Knowledge Graphs for the News]] example used in the lecture. (Remember to save with the correct ''.ttl'' extension.)
* The [[:File:kg4news-dump-20230130.txt | Knowledge Graphs for the News]] example used in the lecture. (Remember to save with the correct ''.ttl'' extension.)
==Lecture 4: Linked Open Data (LOD)==
Themes:
* The LOD cloud
Mandatory readings ''(both lecture 4 and 5)'':
* Chapter 5 in Allemang, Hendler & Gandon (3rd edition)
* [https://www.w3.org/DesignIssues/LinkedData.html Linked Data], Tim Berners-Lee, 2006-07-27.
* [http://lod-cloud.net The Linking Open Data (LOD) cloud diagram] - The Linked Open Data Cloud
Useful materials
* [[:File:BizerHeathBernersLee-LinkedData2009-TheStorySoFar.pdf | Bizer, C., Heath, T., & Berners-Lee, T. (2009). Linked data-the story so far. Semantic services, interoperability and web applications: emerging concepts, 205-227.]]


=Old lectures (2003) - will be updated=
=Old lectures (2003) - will be updated=


==Lecture 4: Open Knowledge Graphs I==
==Lecture 5-6: Open Knowledge Graphs I & II==


Themes:
Themes:
* The LOD cloud
* Important open KGs (LOD datasets)
* Important open KGs (LOD datasets)
** Wikidata
** Wikidata
Line 111: Line 123:
** ConceptNet ''(lecture 5)''
** ConceptNet ''(lecture 5)''


Mandatory readings ''(both lecture 4 and 5)'':
Mandatory readings:
* Chapter 5 in Allemang, Hendler & Gandon (3rd edition)
* Chapter 5 in Allemang, Hendler & Gandon (3rd edition)
* [https://www.w3.org/DesignIssues/LinkedData.html Linked Data], Tim Berners-Lee, 2006-07-27.
* [http://lod-cloud.net The Linking Open Data (LOD) cloud diagram] - The Linked Open Data Cloud
* Important knowledge graphs - and what to read:
* Important knowledge graphs - and what to read:
** Wikidata (https://www.wikidata.org/):
** Wikidata (https://www.wikidata.org/):
Line 139: Line 149:


Useful materials
Useful materials
* [[:File:BizerHeathBernersLee-LinkedData2009-TheStorySoFar.pdf | Bizer, C., Heath, T., & Berners-Lee, T. (2009). Linked data-the story so far. Semantic services, interoperability and web applications: emerging concepts, 205-227.]]
* Wikidata statistics
* Wikidata statistics
** [https://grafana.wikimedia.org/d/000000167/wikidata-datamodel?orgId=1&refresh=30m Entity statistics]
** [https://grafana.wikimedia.org/d/000000167/wikidata-datamodel?orgId=1&refresh=30m Entity statistics]
Line 150: Line 159:
* Parts 1 and 3 in Blumauer & Nagy's text book (not tightly related to the lecture, but time to finish them by now :-))
* Parts 1 and 3 in Blumauer & Nagy's text book (not tightly related to the lecture, but time to finish them by now :-))


==Lecture 5: Open Knowledge Graphs II==
==Lecture 7: Enterprise Knowledge Graphs==
''See readings for lecture 4.''
 
==Lecture 6: Enterprise Knowledge Graphs I==


Themes:  
Themes:  
* Enterprise Knowledge Graphs (EKGs)
* Enterprise Knowledge Graphs (EKGs)
* ''Guest lecture with Sindre Asplem from CapGemini, who will talk about CapGemini's experiences with EKGs, including methods and high-level architecture. He will also talk about SHACL, the RDF Shapes Constraint Language (which we may revisit in Lecture 7 and Exercise 7).''
* Google’s Knowledge Graph
* Amazon’s Product Graph
* (News Hunter’s infrastructure and architecture)
* JSON-LD


Mandatory readings:
Mandatory readings:
* ''Slides from Sindre Asplem's guest lecture are available from mitt.uib.no .''
* [https://www.blog.google/products/search/introducing-knowledge-graph-things-not/ Introducing the Knowledge Graph: Things not Strings], Amit Singhal, Google (2012). ''(The blog post that introduced Google's knowledge graph to the world.)''
* [https://blog.google/products/search/about-knowledge-graph-and-knowledge-panels/ A reintroduction to our Knowledge Graph and knowledge panels], Danny Sullivan, Google (2020).
* [https://www.aboutamazon.com/news/innovation-at-amazon/making-search-easier How Amazon’s Product Graph is helping customers find products more easily], Arun Krishnan, Amazon (2018). ''(Short blog post that reviews some central ideas from the AutoKnow research paper listed below.)''
* [https://www.amazon.science/blog/building-product-graphs-automatically Building product graphs automatically], Xin Luna Dong, Amazon (2020).
* [https://json-ld.org/ JSON for Linking Data]
* [[:File:S12-EnterpriseKGs-II.pdf | Slides from the lecture]]


Supplementary readings:
Supplementary readings:
* Parts 2 and 4 in Blumauer & Nagy's text book (''strongly suggested - this is where Blumauer & Nagy's book is good!'')
* Parts 2 and 4 in Blumauer & Nagy's text book (''strongly suggested - this is where Blumauer & Nagy's book is good!'')
* [[:File:2006.13473.pdf | AutoKnow: Self-Driving Knowledge Collection for Products of Thousands of Types]]. Example of research paper from Amazon - this is a bit heavy for Bachelor level, but you can have a look :-)


==Lecture 7: Rules (SHACL and RDFS)==
==Lecture 8: Rules (SHACL and RDFS)==


Themes:
Themes:
Line 190: Line 205:
* Pages 101-106 in Blumauer & Nagy (suggested)
* Pages 101-106 in Blumauer & Nagy (suggested)


==Lecture 8: Ontologies (OWL)==
==Lecture 9: Ontologies (OWL)==


Themes:
Themes:
Line 214: Line 229:
* Pages 106-109 in Blumauer & Nagy (suggested)
* Pages 106-109 in Blumauer & Nagy (suggested)


==Lecture 9: Vocabularies==
==Lecture 10: Vocabularies==


Themes:
Themes:
Line 240: Line 255:
* [[:File:S09-Vocabularies.pdf | Slides from the lecture]]
* [[:File:S09-Vocabularies.pdf | Slides from the lecture]]


==Lecture 10: Formal ontologies (description logic, OWL-DL)==
==Lecture 11: Formal ontologies (description logic, OWL-DL)==


Themes:
Themes:
Line 259: Line 274:
** ''Cursory'', quickly gets mathematical after the introduction. In particular, sections 2.2.2.3-4 about fixpoint semantics apply to TBoxes with cyclic definitions, which we do not consider in this course. We also do not consider the stuff about rules, epistemics, and reasoning from section 2.2.5 on.
** ''Cursory'', quickly gets mathematical after the introduction. In particular, sections 2.2.2.3-4 about fixpoint semantics apply to TBoxes with cyclic definitions, which we do not consider in this course. We also do not consider the stuff about rules, epistemics, and reasoning from section 2.2.5 on.


==Lecture 11: KG embeddings==
==Lecture 12: KG embeddings==


Themes:
Themes:
Line 276: Line 291:
* [[:file:Bordes_et_al._-_Translating_Embeddings_for_Modeling_Multi-relation.pdf | Bordes et al’s original TransE paper]]
* [[:file:Bordes_et_al._-_Translating_Embeddings_for_Modeling_Multi-relation.pdf | Bordes et al’s original TransE paper]]
* [https://torchkge.readthedocs.io/en/latest/ Welcome to TorchKGE’ s documentation!] (for the labs)
* [https://torchkge.readthedocs.io/en/latest/ Welcome to TorchKGE’ s documentation!] (for the labs)
==Lecture 12: Enterprise Knowledge Graphs II==
Themes:
* Google’s Knowledge Graph
* Amazon’s Product Graph
* (News Hunter’s infrastructure and architecture)
* JSON-LD
Mandatory readings:
* [https://www.blog.google/products/search/introducing-knowledge-graph-things-not/ Introducing the Knowledge Graph: Things not Strings], Amit Singhal, Google (2012). ''(The blog post that introduced Google's knowledge graph to the world.)''
* [https://blog.google/products/search/about-knowledge-graph-and-knowledge-panels/ A reintroduction to our Knowledge Graph and knowledge panels], Danny Sullivan, Google (2020).
* [https://www.aboutamazon.com/news/innovation-at-amazon/making-search-easier How Amazon’s Product Graph is helping customers find products more easily], Arun Krishnan, Amazon (2018). ''(Short blog post that reviews some central ideas from the AutoKnow research paper listed below.)''
* [https://www.amazon.science/blog/building-product-graphs-automatically Building product graphs automatically], Xin Luna Dong, Amazon (2020).
* [https://json-ld.org/ JSON for Linking Data]
* [[:File:S12-EnterpriseKGs-II.pdf | Slides from the lecture]]
Supplementary readings:
* [[:File:2006.13473.pdf | AutoKnow: Self-Driving Knowledge Collection for Products of Thousands of Types]]. Example of research paper from Amazon - this is a bit heavy for Bachelor level, but you can have a look :-)


==Lecture 13: Wrapping up==
==Lecture 13: Wrapping up==

Revision as of 13:00, 7 February 2024

This page currently shows some of the lectures and readings from the Spring of 2023. It will be updated with materials for 2024 as the course progresses.

Textbooks

Main course book (the whole book is mandatory reading):

  • Dean Allemang, James Hendler & Fabien Gandon (2020). Semantic Web for the Working Ontologist, Effective Modeling for Linked Data, RDFS and OWL (Third Edition). ISBN: 9781450376143, PDF ISBN: 9781450376150, Hardcover ISBN: 9781450376174, DOI: 10.1145/3382097.

Supplementary reading book (not mandatory):

  • Andreas Blumauer and Helmut Nagy (2020). The Knowledge Graph Cookbook - Recipes that Work. mono/monochrom. ISBN-10: ‎3902796707, ISBN-13: 978-3902796707.

Other materials

In addition, the materials listed below for each lecture are either mandatory or suggested reading. More materials will be added to each lecture in the coming weeks.

The lectures and lectures notes are also part of the curriculum.

Make sure you download the electronic resources to your own computer in good time before the exam. This is your own responsibility. That way you are safe if a site becomes unavailable or somehow damaged the last few days before the exam.

Note: to download some of the papers, you may need to be inside UiB's network. Either use a computer directly on the UiB network or connect to your UiB account through VPN.

Lectures (preliminary)

Below are the mandatory and suggested readings for each lecture. All the textbook chapters in Allemang, Hendler & Gandon are mandatory, whereas the chapters in Blumauer & Nagy are suggested.

Lecture 1: Introduction to KGs

Themes:

  • Introduction to Knowledge Graphs
  • Organisation of the course

Mandatory readings:

Useful materials:

  • Important knowledge graphs (which we will look more at later):
  • Pages 27-55 and 105-122 in Blumauer & Nagy (suggested)

Lecture 2: Representing KGs (RDF)

Themes:

  • Resource Description Framework (RDF)
  • Programming RDF in Python

Mandatory readings:

  • Chapter 3 in Allemang, Hendler & Gandon (3rd edition)
  • W3C's RDF 1.1 Primer until and including 5.1.2 Turtle (but not the rest for now)
  • RDFlib 7.0.0 documentation, the following pages:
    • The main page
    • Getting started with RDFLib
    • Loading and saving RDF
    • Creating RDF triples
    • Navigating Graphs
    • Utilities and convenience functions
    • RDF terms in rdflib
    • Namespaces and Bindings
  • Slides from the lecture

Useful materials:

Lecture 3: Querying and updating KGs (SPARQL)

Themes:

  • SPARQL queries
  • SPARQL Update
  • Programming SPARQL and SPARQL Update in Python

Mandatory readings (tentative):

Useful materials:

Lecture 4: Linked Open Data (LOD)

Themes:

  • The LOD cloud

Mandatory readings (both lecture 4 and 5):

Useful materials

Old lectures (2003) - will be updated

Lecture 5-6: Open Knowledge Graphs I & II

Themes:

  • Important open KGs (LOD datasets)
    • Wikidata
    • DBpedia (lecture 5)
    • GeoNames (lecture 5)
    • the GDELT project (lecture 5)
    • WordNet (lecture 5)
    • BabelNet (lecture 5)
    • ConceptNet (lecture 5)

Mandatory readings:

Useful materials

Lecture 7: Enterprise Knowledge Graphs

Themes:

  • Enterprise Knowledge Graphs (EKGs)
  • Google’s Knowledge Graph
  • Amazon’s Product Graph
  • (News Hunter’s infrastructure and architecture)
  • JSON-LD

Mandatory readings:

Supplementary readings:

Lecture 8: Rules (SHACL and RDFS)

Themes:

  • SHACL and RDFS
  • Axioms, rules and entailment
  • Programming SHACL and RDFS in Python

Mandatory readings:

Useful materials:

Lecture 9: Ontologies (OWL)

Themes:

  • Basic OWL concepts
  • Axioms, rules and entailments
  • Programming basic OWL in Python

Mandatory readings:

Useful materials (cursory):

Lecture 10: Vocabularies

Themes:

  • LOD vocabularies and ontologies

Mandatory readings:

Lecture 11: Formal ontologies (description logic, OWL-DL)

Themes:

  • OWL-DL
  • Description logic
  • Decision problems

Mandatory readings:

Useful materials:

Lecture 12: KG embeddings

Themes:

  • KG embeddings
  • Link prediction
  • TorchKGE

Mandatory readings (preliminary):

Supplementary readings (preliminary):

Lecture 13: Wrapping up

Themes:

  • Questions about the exam
  • Quizzes

Mandatory readings:

  • The rest of Allemang, Hendler & Gandon (3rd edition)

Useful materials:

  • The rest of Blumauer & Nagy (suggested)


 

INFO216, UiB, 2017-2024, Andreas L. Opdahl (c)