Difference between revisions of "Lab: Semantic Lifting - HTML"

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=Lab 10: Semantic Lifting - HTML=
=Lab 11: Semantic Lifting - HTML=
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Revision as of 09:56, 27 March 2020

Lab 11: Semantic Lifting - HTML

Link to Discord server



Today's topic involves lifting data in HTML format into RDF. HTML stands for HyperText Markup Language and is used to describe the structure and content of websites.

HTML has a tree structure, consisting of a root element, children and parent elements, attributes and so on. The goal is for you to learn an example of how we can convert unsemantic data into RDF.

For parsing of the HTML, we will use the python library: BeautifulSoup.

Relevant Libraries/Functions

  • from bs4 import BeautifulSoup as bs
  • import requests
  • import re

  • beautifulsoup.find()
  • beautifulsoup.find_all()
  • string.replace(), string.split()
  • re.findall()


Task 1

pip install beautifulsoup4

Lift the HTML information about research articles found on this link into triples: "https://www.semanticscholar.org/topic/Knowledge-Graph/159858"

The papers will be represented with their Corpus ID. (the subject of triples). For Example, a paper has a title, a year, authors and so on.

For parsing of the HTML, we will use BeautifulSoup.

I recommend right clicking on the web page itself and clicking 'inspect' in order to get a readable version of the html.

Now you can hover over the HTML tags on the right side to easily find information like the ID of the paper.

For example, we can see that the main topic of the page "Knowlede Graph" is under a 'h1' tag with the attribute class: "entity-name".

Knowing this we can use BeautifulSoup to find this in python code e.g:

topic = html.body.find('h1', attrs={'class': 'entity-name'}).text

Similarily, to find multiple values at once, we use find_all instead. E.g, Here I am selecting all the papers, Which I can then iterate through:

papers = html.body.find_all('div', attrs={'class': 'flex-container'})
for paper in papers:
    # e.g selecting title.
    title = paper.find('div', attrs={'class': 'timeline-paper-title'})

Task 2

Create triples for the Topic of the page ("Knowledge Graph").

For example, a topic as related topics (on the top-right of the page). It also has, "known as" values, and a description.

This is a good opportunity to use the SKOS vocabulary to describe Concepts.

If You have more Time

If you look at the web page, you can see that there are buttons for expanding the description, related topics and more.

This is a problem as beautiful soup won't find this additional information until these buttons are pressed.

Use the python library selenium to simulate a user pressing the 'expand' buttons to get all the triples you should get.

Code to Get Started (Make sure you understand it)

from bs4 import BeautifulSoup as bs
from rdflib import Graph, Literal, URIRef, Namespace
from rdflib.namespace import RDF, OWL, SKOS, RDFS, XSD
import requests
import re

g = Graph()
ex = Namespace("http://example.org/")
g.bind("ex", ex)

# Download html from URL and parse it with BeautifulSoup.
url = "https://www.semanticscholar.org/topic/Knowledge-Graph/159858"
page = requests.get(url)
html = bs(page.content, features="html.parser")
# print(html.prettify())

# Find the html that surrounds all the papers
papers = html.body.find_all('div', attrs={'class': 'flex-container'})

# Iterate through each paper to make triples:
for paper in papers:
    # e.g selecting title. 
    title = paper.find('div', attrs={'class': 'timeline-paper-title'})

Useful Reading