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Mark A Greenwood, Jonathon Hare,
David R Newman, Wim Peters
SemanticMedia@TheBritishLibrary
Monday 23rd September 2013
The Project Vision
• Semantic News is 6 month project:
• June to November 2013
• Two 50% FTEs (1 Southampton, 1 Sheffield)
• An interactive `second screen’ to provide
contextual information on Question Time
questions
• Use multiple data sources
• Perform named entity recognition
• Exploit Linked Open Datasets
• Towards an almost real-time system
Where is the Data? (1)
• Question Time in
2010
• 34 episodes, 163
questions
• BBC Subtitles
• XML encoded
• Broadcast as the
subtitles stream
Where is the Data? (2)
• BBC Programmes Data
• XML encoded
• Information about the
programme,
(panellists, topics,
broadcast dates, etc.)
• Tweets
• Taken from the Twitter
‘Garden Hose’ (10%
stream)
Pre-parsing Subtitles Data
• Raw XML subtitles
• Remove duplicate words
• Parse into CSV
• time offset
• sentence
• Break into questions
• BBC Programmes data provides question time
offsets
• Compare with subtitles time offsets and split
Pre-parsing Twitter Data
• Twitter ‘Garden Hose’ for 2010 Dataset
• Used Apache Hadoop and filtered on:
• @bbcqt, @bbcquestiontime
• #bbcqt, #bbcquestiontime, #questiontime
• “Question Time” “David Dimbleby”
• Collated JSON results and imported into
OpenRefine
• Removed irrelevant fields
• Filtered out tweets that did not contain “bbc”
• Exported as CSV
Information Extraction with GATE
● General Architecture for Text Engineering (GATE)
● Developed by University of Sheffield since 2000
● Used by many researchers, scientists and
organisations all over the world
● Includes various components for language processing
● Parsers, machine learning tools, stemmers, IR tools, IE
components for various languages...
● Also performs visualising and manipulating of text,
annotations, ontologies, parse trees, etc., and tools
for evaluation
Linguistic pre-processing
● Techniques
● Tokenization
● Sentence Splitting
● Language Identification
● POS tagging
● Morphological analysis
● Adapted for use with social media like Twitter
Named Entity Recognition
● Approaches
● Gazetteer lookup
● JAPE grammars
● Co-reference
● Types
● Location: countries, regions, cities etc.
● Organisation: names of companies, government
organisations, committees, agencies, universities, etc.
● Person: names of people
● Date: absolute dates like ‘October 2012’ or ‘2007’, as well
as relative dates, such as ‘last year’.
● Measurements: e.g. “8,596 km”, “one fifth”, percentages
and probabilities
Enrichment: LODIE
● Under constant development in various projects
● Associates the most probable LOD URI with
named entities
● Disambiguation against DBPedia
● Various techniques to enhance recall
Enrichment: LODIE
“Ken Clarke: The Labour plotters hide behind the
knife and stab with the cloak! Brilliant!!”
“Hain just lost Labour votes by supporting the
•£25k benefits of an extremist.”
Representing Extracted Information
Conceptualising a Question
http://www.youtube.com/watch?v=O3l9Mi-KylI
Show Me The Data!
• Use (Linked) Open Data Datasets
• Crime Data
• Election Data (constituencies, majorities, etc.)
• MP voting records
• School league tables
• NHS performance league tables
• Economic Figures (GDP, Inflation, Unemployment)
• Compare and contrast
Let’s have some
questions from
our audience.

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Semanticnews 230913-final

  • 1. Mark A Greenwood, Jonathon Hare, David R Newman, Wim Peters SemanticMedia@TheBritishLibrary Monday 23rd September 2013
  • 2.
  • 3.
  • 4. The Project Vision • Semantic News is 6 month project: • June to November 2013 • Two 50% FTEs (1 Southampton, 1 Sheffield) • An interactive `second screen’ to provide contextual information on Question Time questions • Use multiple data sources • Perform named entity recognition • Exploit Linked Open Datasets • Towards an almost real-time system
  • 5. Where is the Data? (1) • Question Time in 2010 • 34 episodes, 163 questions • BBC Subtitles • XML encoded • Broadcast as the subtitles stream
  • 6. Where is the Data? (2) • BBC Programmes Data • XML encoded • Information about the programme, (panellists, topics, broadcast dates, etc.) • Tweets • Taken from the Twitter ‘Garden Hose’ (10% stream)
  • 7. Pre-parsing Subtitles Data • Raw XML subtitles • Remove duplicate words • Parse into CSV • time offset • sentence • Break into questions • BBC Programmes data provides question time offsets • Compare with subtitles time offsets and split
  • 8. Pre-parsing Twitter Data • Twitter ‘Garden Hose’ for 2010 Dataset • Used Apache Hadoop and filtered on: • @bbcqt, @bbcquestiontime • #bbcqt, #bbcquestiontime, #questiontime • “Question Time” “David Dimbleby” • Collated JSON results and imported into OpenRefine • Removed irrelevant fields • Filtered out tweets that did not contain “bbc” • Exported as CSV
  • 9. Information Extraction with GATE ● General Architecture for Text Engineering (GATE) ● Developed by University of Sheffield since 2000 ● Used by many researchers, scientists and organisations all over the world ● Includes various components for language processing ● Parsers, machine learning tools, stemmers, IR tools, IE components for various languages... ● Also performs visualising and manipulating of text, annotations, ontologies, parse trees, etc., and tools for evaluation
  • 10. Linguistic pre-processing ● Techniques ● Tokenization ● Sentence Splitting ● Language Identification ● POS tagging ● Morphological analysis ● Adapted for use with social media like Twitter
  • 11. Named Entity Recognition ● Approaches ● Gazetteer lookup ● JAPE grammars ● Co-reference ● Types ● Location: countries, regions, cities etc. ● Organisation: names of companies, government organisations, committees, agencies, universities, etc. ● Person: names of people ● Date: absolute dates like ‘October 2012’ or ‘2007’, as well as relative dates, such as ‘last year’. ● Measurements: e.g. “8,596 km”, “one fifth”, percentages and probabilities
  • 12. Enrichment: LODIE ● Under constant development in various projects ● Associates the most probable LOD URI with named entities ● Disambiguation against DBPedia ● Various techniques to enhance recall
  • 13. Enrichment: LODIE “Ken Clarke: The Labour plotters hide behind the knife and stab with the cloak! Brilliant!!” “Hain just lost Labour votes by supporting the •£25k benefits of an extremist.”
  • 16. Show Me The Data! • Use (Linked) Open Data Datasets • Crime Data • Election Data (constituencies, majorities, etc.) • MP voting records • School league tables • NHS performance league tables • Economic Figures (GDP, Inflation, Unemployment) • Compare and contrast
  • 17. Let’s have some questions from our audience.

Notes de l'éditeur

  1. Retro Television(Intermediate) To reproduce the effects on this slide, do the following:On the Home tab, in the Slides group, click Layout, and then click Blank.On the Insert tab, in the Images group, click Picture.In the left pane of the Insert Picture dialog box, click the drive or library that contains the picture of the TV. In the right pane of the dialog box, click the picture that you want and then click Insert.Select the image and under Picture Tools, in the Format tab, in the Picture Styles group, click Picture Effects, click Shadow, and under Outer, select Offset Top (third row, second option from left).On the Home tab, in the Drawing group, click Arrange, point to Align then do the following:Click Align Middle.Click Align Center. To reproduce the video effects on this slide, do the following:On the Insert tab, in the Media group, click Video, and then click Video from File. In the left pane of the Insert Video dialog box, click the drive or library that contains the video. In the right pane of the dialog box, click the video that you want and then click Insert.On the Animations tab, in the Animation group, select Play. Also on the Animations tab, in the Timing group, click the arrow to the right of Start and select With Previous.With the video selected, under Video Tools, in the Format tab, in the bottom right corner of the Video Styles group, click the arrow opening the Format Video dialog box. In the Format Video dialog box, click Size in the left pane, and under Size and Rotate in the right pane, set the Height to 3.58” and the Width to 4.75”.In the Format Video dialog box, click Position in the left pane, and under Position on Slide in the right pane, set Horizontal to 2.6” and the Vertical to 1.36”.Close the Format Video dialog box.Select the video, and under Video Tools, on the Format tab, in the Adjust group, click Color, under Recolor, select Grayscale (first row, second option from left).Select the video, and under Video Tools, on the Format tab, in the Arrange group, click Send Backward, and then select Send to Back. To reproduce the background effects on this slide, do the following:On the Insert tab, In the Illustrations group, click Shapes, then under Rectangles, select Rectangle (first row, first option from left),Drag to draw rectangle on slide.Under Drawing Tools, on the Format tab, in the ShapeStyles group, click the arrow at the bottom right corner to launch the Format Picture dialog box.In the Format Picture dialog box, select Fill in the left pane, under Fill on the right pane, select Picture or Texture Fill, then click the arrow to the right of Texture and select Oak (fifth row, third option from left).Also in the Format Picture dialog box, select Line Color in the left pane, under Line Color on the right pane select No line.Also in the Format Picture dialog box, select Size in the left pane, under Size and rotate on the right pane do the following:In the Height box, enter 1.58”.In the Width box, enter 7.5”.In the Rotation box, enter 90 degrees.On the Home tab, in the Drawing group, click Arrange, point to Align and then do the following:Click Align Top.Click Align Left.Also on the Home tab, in the Clipboard group, click Copy, and then select Duplicate. Repeat this process five more times, for a total of seven rectangles.Select one of the newly colored rectangles, under Picture Tools, on the Format tab, in the Arrange group, click Align and then do the following:Click Align Top.Click Align Right.Press and hold CTRL, select all rectangles. Also under Picture Tools, on the Format tab, in the Arrange group, click Align and then do the following:Click Align Top.Click Distribute Horizontally.Select the second, third, fourth, fifth, and sixth rectangles from left, under Picture Tools, on the Format tab, in the Size group, set the Height as 1.56”.Press and hold CTRL, select all rectangles. Also under Picture Tools, on the Format tab, in the Arrange group, click Align, then select Distribute Horizontally.Press and hold CTRL, select the first, fourth, and seventh rectangles from left. Under Picture Tools, on the Format tab, in the Adjust group, click Color, then under Color Saturation, select Saturation: 66% (first row, third option from left).Press and hold CTRL, select the third and fifth rectangles from the left. Under Picture Tools, on the Format tab, in the Adjust group, click Color, then under Color Saturation, select Saturation: 200% (first row, fifth option from left). Close the Format Picture dialog.Select all of the oak panel rectangles.Also under Picture Tools, on the Format tab, in the Arrange group, click Send Backward and then click Send to Back.On the Insert tab, In the Illustrations group, click Shapes, then under Rectangles, select Rectangle (first row, first option from left).Drag to draw rectangle on slide.Under Drawing Tools, on the Format tab, in the ShapeStyles group, click the arrow at the bottom right corner to launch the Format Picture dialog box.In the Format Picture dialog box, select Fill in the left pane, under Fill on the right pane select Picture or Texture Fill, then click the arrow to the right of Texture and select Cork (fifth row, first option from left).Also in the Format Picture dialog box, select Line Color in the left pane, under Line Color on the right pane select No line.Also in the Format Picture dialog box, select Shadow in the left pane, under Presets on the right pane, under Inner select Inside Top (first row, second from left).Also in the Format Picture dialog box, select 3-D Rotation in the left pane, under Presets on the right pane, under Perspective select Perspective Relaxed (second row, third from left).Also in the Format Picture dialog box, select Size in the left pane, under Size and rotate on the right pane do the following:In the Height box, enter 3.58”.In the Width box, enter 11”.Also in the Format Picture dialog box, select Position in the left pane, and under Position on Slide on the right pane, do the following:In the Horizontal box, enter -0.5”.In the Vertical box, enter 4.47”.Close the Format Picture dialog box.With the same rectangle selected, under Drawing Tools, on the Format tab, in the Arrange group, click Send Backward, select Send Backward.