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Detection of Embryonic Research Topics
by Analysing Semantic Topic Networks
Angelo Antonio Salatino, Enrico Motta
@angelosalatino
SAVE-SD @ WWW2016
Detecting Topic Trends
โ€ข In a recognised research area we can find
two main stages:
โ€“ initial stage
โ€“ recognised
โ€ข Can we intervene before?
Hypothesis
โ€ข We hypothesise the existence of an earlier
embryonic phase:
โ€“ The topic itself has no label, but
โ€“ We theorize that they can be detected by
analysing the dynamics of already established
research areas
Experiment
โ€ข Dataset
โ€“ Semantically-enhanced co-occurrence graph
โ€ข Selection Phase
โ€“ Debutant topics vs. Control group
โ€ข Analysis Phase
โ€“ Statistical analysis of the two populations
Experiment: Dataset
โ€ข From the topic network
we selected two groups
of topics:
โ€“ debutant group: topics
that made their debut in
the period between
2000 and 2010
โ€“ control group: already
existing in the decade
2000-10Semantic Topic Networks using Klink-2 by
Osborne et al. @ ISWC 2015
semantic
web
technology
semantic
web
semantic
web
technologies
ontology
mapping
ontology
matching
case
study
knowledge
management
systems
knowledge
management
system
linked
datum
linked
data
fast
implementation
Experiment: Selection Phase
For each testing topic we have:
Experiment: Analysis Phase
Clique metric:
โ€ข Harmonic
mean
โ€ข Arithmetic
mean
Timeline metric:
โ€ข Linear regression of the time series
โ€ข Difference between the extreme
values
๐›ผ slope
Findings
โ€ข We performed two evaluations over 3 million
publications
โ€ข Preliminary Evaluation:
โ€“ 2 topics in the debutant group (Semantic Web
and Cloud Computing)
โ€“ Tested all the combination of the mentioned
techniques
โ€ข Evaluation:
โ€“ 50 topic in both debutant and non-debutant group
Findings: Preliminary Evaluation
โ€ข AM-N: arithmetic mean and the
difference between the two
extreme values;
โ€ข AM-CF: arithmetic mean and the
linear interpolation;
โ€ข HM-N: harmonic mean and the
difference between the first and
the last values;
โ€ข HM-CF: harmonic mean and the
linear interpolation.
Splittedbyyear
p-value = 7.0280โ€ข10-12Semantic Web Cloud Computing
Findings: Interesting Insights
Findings: Evaluation
โ€ข We used different
sizes of the subgraph
associated to each
testing topic
p-values โ‰ค 1.28โ€ข10-51
Conclusion
โ€ข Our findings confirm the initial hypothesis
โ€ข Next step:
โ€“ Automatic detection of embryonic topics by
analysing the topic network and identify sub-
graps exhibiting such dynamics
โ€“ Analyse dynamics in other networks (e.g.,
authors and venues)
Detection of Embryonic Research Topics by Analysing Semantic Topic Networks

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Detection of Embryonic Research Topics by Analysing Semantic Topic Networks

  • 1. Detection of Embryonic Research Topics by Analysing Semantic Topic Networks Angelo Antonio Salatino, Enrico Motta @angelosalatino SAVE-SD @ WWW2016
  • 2. Detecting Topic Trends โ€ข In a recognised research area we can find two main stages: โ€“ initial stage โ€“ recognised โ€ข Can we intervene before?
  • 3. Hypothesis โ€ข We hypothesise the existence of an earlier embryonic phase: โ€“ The topic itself has no label, but โ€“ We theorize that they can be detected by analysing the dynamics of already established research areas
  • 4. Experiment โ€ข Dataset โ€“ Semantically-enhanced co-occurrence graph โ€ข Selection Phase โ€“ Debutant topics vs. Control group โ€ข Analysis Phase โ€“ Statistical analysis of the two populations
  • 5. Experiment: Dataset โ€ข From the topic network we selected two groups of topics: โ€“ debutant group: topics that made their debut in the period between 2000 and 2010 โ€“ control group: already existing in the decade 2000-10Semantic Topic Networks using Klink-2 by Osborne et al. @ ISWC 2015 semantic web technology semantic web semantic web technologies ontology mapping ontology matching case study knowledge management systems knowledge management system linked datum linked data fast implementation
  • 6. Experiment: Selection Phase For each testing topic we have:
  • 7. Experiment: Analysis Phase Clique metric: โ€ข Harmonic mean โ€ข Arithmetic mean Timeline metric: โ€ข Linear regression of the time series โ€ข Difference between the extreme values ๐›ผ slope
  • 8. Findings โ€ข We performed two evaluations over 3 million publications โ€ข Preliminary Evaluation: โ€“ 2 topics in the debutant group (Semantic Web and Cloud Computing) โ€“ Tested all the combination of the mentioned techniques โ€ข Evaluation: โ€“ 50 topic in both debutant and non-debutant group
  • 9. Findings: Preliminary Evaluation โ€ข AM-N: arithmetic mean and the difference between the two extreme values; โ€ข AM-CF: arithmetic mean and the linear interpolation; โ€ข HM-N: harmonic mean and the difference between the first and the last values; โ€ข HM-CF: harmonic mean and the linear interpolation. Splittedbyyear p-value = 7.0280โ€ข10-12Semantic Web Cloud Computing
  • 11. Findings: Evaluation โ€ข We used different sizes of the subgraph associated to each testing topic p-values โ‰ค 1.28โ€ข10-51
  • 12. Conclusion โ€ข Our findings confirm the initial hypothesis โ€ข Next step: โ€“ Automatic detection of embryonic topics by analysing the topic network and identify sub- graps exhibiting such dynamics โ€“ Analyse dynamics in other networks (e.g., authors and venues)