Modeling Relational Events via Latent Classes
Contents
Citation
Christopher DuBois, Padhraic Smyth. Modeling Relational Events via Latent Classes. KDD 2010
Online version
Summary
Many social network activities can be described as a series of dyadic events. An event in this paper is defined as a triple of (sender, receiver, event_type). Authors assume that such events are generated by some latent class and in the paper they proposed a graphical model to identify the latent class as well as dyadic events with the inference implementation of Gibbs sampling and Expectation-Maximization methods.
Methodology
It's assumed that relational events are generated by following process:
- Draw the class distribution ~ Dirichlet()
- Draw distributions:
~ Dirichlet()
~ Dirichlet()
~ Dirichlet()
for all c in {1...C}
- For each event
(a) Draw ~ Multinomial(), the event’s class
(b) Draw ~ Multinomial(), the event’s sender
(c) Draw ~ Multinomial(), the event’s receiver
(d) Draw ~ Multinomial(), the event’s type
It's not hard to work out the likelihood for the data:
Two ways of inference, Gibbs sampling and EM, are implemented in this paper.
Data
Experimental Result
- Historical Trends in Computational Linguistics
To visualize some trend, they show the probability mass asscociated with various topics over time, plotted as (a smoothed version of) . The topics becoming more prominent are such as classification, probabilistic models, stat. parsing, stat. MT and lex. sem, while the topics declined are computational semantics, conceptual semantics and plan-based dialogue and discourse.
- Is Computational Linguistics Becoming More Applied?
Look at trends over time for some applications such as Machine Translation, Spelling Correction, Dialogue Systems etc and found there is a clear trend toward an increase in applications over time.
- Differences and Similarities Among COLING, ACL and EMNLP
Inferred from the topic entropy, COLING has been historically the broadest of the three conferences; ACL started with a fairly narrow focus, became nearly as broad as COLING during the 1990's but become more narrow again in recent years; EMNLP shows being its status as a "special interest" conference.
From the JS divergence, they showed all of the three conferences are converging to their topics.
Related papers
Blei and Lafferty, ICML2006: David Blei and John D. Lafferty. 2006. Dynamic topic models. ICML.
Wang and McCallum, KDD2006: Xuerui Wang and Andrew McCallum. 2006. Topics over time: a non-Markov continuous-time model of topical trends. In KDD, pages 424–433, New York, NY, USA. ACM.