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Francesco Osborne, Andrea Mannocci, Enrico Motta
Knowledge Media Institute, The Open University, United Kingdom
K-CAP 2017
Forecasting the Spreading of Technologies
in Research Communities
Standing	on	the	Shoulder	of	Giants	(and	Technologies)
• We	constantly	reuse	ideas,	technologies,	methods	and	materials.
• Technologies	will	usually	appear	in	a	research	community	and	then	spread	
to	other	research	areas in	the	following	years.
– e.g.,	SW	technologies	were	created	in	the	field	of	AI,	KBS,	WWW	and	
then	they	spread	to	Information	Retrieval,	HCI,	Biology	and	so	on.	
• This	process	is	often	inefficient	and	may	take	several	years.
• Currently	there	are	no	methods	to	predict	technology	spreading	across	
research	areas.
2
Standing	on	the	shoulder	of	giants	(and	technologies)
• We	constantly	reuse	ideas,	technologies,	methods	and	materials.
• Technologies	will	usually	appear	in	a	research	community	and	then	spread	
to	other	research	areas	in	the	following	years.
– e.g.,	SW	technologies	were	created	in	the	field	of	AI,	KBS,	WWW	and	
then	they	spread	to	Information	Retrieval,	HCI,	Biology	and	so	on.	
• This	process	is	often	inefficient	and	may	take	several	years.
• Currently	there	are	no	methods	to	predict	technology	spreading	across	
research	areas.
How	can	we	improve	the	technology	transfer?
How	can	we	help	researchers	to	track	down	relevant	
technologies?
3
Predict	Technology	Spreading
Technology-Topic	Framework	(TTF)	is	a	novel	approach	for	
predicting	the	technologies	that	will	be	adopted	in	a	research	field.
• It	is	based	on	the	hypothesis	that	technologies	that	exhibit	similar	
spreading	patterns	will	be	adopted	by	similar	communities.	
4
Input	Knowledge	Bases
TTF	takes	as	input	three	knowledge	bases:
1)		A	dataset	of	research	papers,	described	by	means	of	their	titles,	
abstracts,	and	keywords;
– A	dump	of	the	Scopus	database	in	the	1990-2013	period,	containing	
about	16	million	papers	
5
Input	Knowledge	Bases
TTF	takes	as	input	three	knowledge	bases:
1)		A	dataset	of	research	papers,	described	by	means	of	their	titles,	
abstracts,	and	keywords;
– A	dump	of	the	Scopus	database	in	the	1990-2013	period,	containing	
about	16	million	papers	
2)	A	list	of	input	technologies,	associated	to	the	relevant	
publications	in	the	research	paper	dataset;
– 1,118	technologies	extracted	with	TechMiner and	from	Wikipedia	which	
appeared	in	>	10	publications	in	the	Scopus	dataset.	
– We	focused	on	three	categories:
• algorithms/approaches (e.g.,	Support	Vector	Machines,	Particle	Swarm	
Optimisation,	Latent	Semantic	Analysis)
• formats (e.g.,	Rule	Interchange	Format,	OWL	2,	Systems	Modeling Language)
• applications (e.g.,	OntoClean,	Taverna,	Annotea).
6
Input	Knowledge	Bases	2
3)	An	ontology	of	research	areas,	describing	topics	and	their	
relationships.
• Computer	Science	Ontology	(CSO),	automatically	created	by	Klink-2	
algorithm	and	currently		trialled	by	Springer	Nature	to	classify	
proceedings.	Includes	15K	concepts	and	70K	relationships.
7
Osborne, F. and Motta, E.: Klink-2: integrating multiple web sources to generate
semantic topic networks. In ISWC 2015. (2015).
Generation	of	Technology-Topic	Matrices
• We	associated	each	paper	to	relevant	areas	in	CSO	exploiting	
the	skos:broaderGeneric and	relatedEquivalent relationships.
– e.g.,	a	publication	associated	with	SPARQL	will	be	tagged	with	topics	such	
as	RDF,	Linked	Data,	SW,	WWW,	and	Computer	Science.
• We	produced	a	sequence	of	matrices	that	contain	the	number	of	
publications	of	a	technology	in	a	topic	in	a	given	year.
8
Technology	Propagation	Forecasting
It	is	treated	as	! separate	classification	problems,	one	for	each	
topic.
9
Evaluation
• We	evaluated	TTF	on	1,118	technologies	and	173	topics	in	the	
field	of	Computer	Science	during	the	1990-2013	period.
• Two	main	goals:
– Confirming	that	it	is	possible	to	forecast	technology	propagation
– Comparing	the	performance	of	several	ML	algorithms
• We	tested	six	ML	algorithms:	Logistic	Regression,	Random	Forest,	
Decision	Tree,	Support	Vector	Machine,	Neural	Network,	and	
Gradient	Boosting.	
• Each	topic	classifier	was	trained	on	average	on	5,136	 240	
examples	and	was	evaluated	on	679	 90	examples.	
10
Precision
11
Recall
12
Best	research	areas	- Random	Forest	- F1	score
13
Example	of	forecasted	topics
14
Conclusions
• It	is	possible	to	forecast	technology	spreading,	at	least	for	
some	categories	of	topics.
• TTF	performed	well,	but	it	would	be	interesting	to	evaluate	it	
with	a	larger	set	of	technologies	and	topics.
• We	could	use	this	technology	for	alerting	researchers	about	
promising	new	technologies	relevant	to	their	research	and	
shorten	the	technology	transfer	time.
15
Next	Steps
• Collecting	data	about	more	technologies	to	perform	larger	
scale	experiments.
• Creating	an	ontology	of	technologies	and	incorporate	it	in	the	
analysis.
• Enriching	the	forecasting	model	by	considering	text	generated	
features	and	external	knowledge	bases.
• Expanding	the	scope	of	our	work	by	including	other	research	
fields,	such	as	Biology,	Social	Science,	and	Engineering.	
16
Francesco
Osborne
Andrea
Mannocci
Enrico
Motta
Email: francesco.osborne@open.ac.uk
Twitter: FraOsborne
Site: people.kmi.open.ac.uk/francesco
Osborne, F., Mannocci, A. and Motta, E. (2017)
Forecasting the Spreading of Technologies in Research Communities
K-CAP 2017, Austin, Texas, USA.
Forecasting the Spreading of Technologies in Research Communities @ K-CAP 2017

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Forecasting the Spreading of Technologies in Research Communities @ K-CAP 2017