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Prototype-Driven Learning for Sequence Models. Aria Haghighi and Dan Klein University of California Berkeley Slides prepared by Andrew Carlson for the Semi-supervised NL Learning Reading Group. Motivation: Learn models with least effort. Supervised learning requires many labeled examples
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Prototype-Driven Learning for Sequence Models Aria Haghighi and Dan Klein University of California Berkeley Slides prepared by Andrew Carlson for the Semi-supervised NL Learning Reading Group
Motivation: Learn models with least effort • Supervised learning requires many labeled examples • Unsupervised learning requires a carefully designed model – does not necessarily minimize total effort • Prototype-driven learning can require less total effort
Prototype-driven learning • Specify prototypical examples for each target label • Example: for POS tagging, list the target tags and a few examples of each tag
Arguments for prototype-driven learning • Minimum one would have to provide to a human annotator • Pedagogical use • Natural language exhibits proform and prototype effects
General approach • Link any given word to similar prototypes using distributional similarity
General approach • Link any given word to similar prototypes using distributional similarity • Encode these prototype links as features in a log-linear generative model, trained to fit unlabeled data
General approach • Link any given word to similar prototypes using distributional similarity • Encode these prototype links as features in a log-linear generative model, trained to fit unlabeled data Example: reported may be linked to said, which is a prototype for the POS tag VBD.
Classified Ad Segmentation (Grenager et al. 2005) Task: Segment classified advertisements into topical sections
Classified Ad Segmentation (Grenager et al. 2005) Task: Segment classified advertisements into topical sections Typical of unsupervised learning on a new domain: Grenager et al. altered their HMM to prefer diagonal transitions, then modified the transition structure to explicitly model boundary tokens.
Approach • For each document x, we would like to predict a sequence of labels y • Build a generative model and choose parameters θ to maximize the log-likelihood of the observed data D:
Markov Random Fields • Use MRF model family • Undirected equivalent to HMMs
Markov Random Fields • Use MRF model family • Undirected equivalent to HMMs Edge/transition clique potential Joint probability Node/emission clique potential Normalizer
Markov Random Fields • Use MRF model family • Undirected equivalent to HMMs Edge/transition clique potential Joint probability Node/emission clique potential Normalizer is a potential over a clique with form
Using distributional similarity and prototypes • Add a node feature PROTO = z for all prototypes z similar to the word at that node • For POS tagging, similarity is based on positional context vectors • For the classified ad task, position is ignored and a wider window is used
Parameter estimation • See the paper • Gradient-based method (L-BFGS), forward-backward, Viterbi
English POS tagging • Used the WSJ portion of the Penn treebank • Used two sizes– 48K tokens, 193K tokens
Baseline features • BASE features • Node features: exact word, character suffixes, init-caps, contains-hyphen, contains-digit • Edge features: tag trigrams
Building the prototype list • Automatically extracted the prototype list • For each label, selected the top three occurring words that were not given another label more often
Building the prototype list • Automatically extracted the prototype list • For each label, selected the top three occurring words that were not given another label more often Yes. This does use labeled data! The authors did it this way to give repeatable results, and to avoid excessive tuning.
Use the prototypes • Restricting the prototype words to have their respective labels improved performance, but did not help similar non-prototype words. • Solution: add PROTO features to similar words
English POS transition mass true estimated
Chinese POS results • Reduces the error rate from BASE by 35%, but not as good as English results • Reasons: task is harder, and had less data for distributional similarity
Classified ad segmentation • For distributional similarity, used context vectors but ignored distance and direction • Added special BOUNDARY state to handle tokens that indicate transitions • Special model tweaking– deviance from “least effort” motivation
Classified ad segmentationresults • BASE scored 46.4% accuracy • BASE+PROTO+SIM scores 71.5% accuracy • BASE+PROTO+SIM+BOUND scores 72.4% • Grenager et al. reported supervised accuracy of 74.4%
Classified ad transition mass estimate from all features labeled estimate from BASE features
Conclusions • Prototype-driven learning provides a compact and declarative way to specify a target labeling scheme. • Distributional similarity features seem to work well in linking words to prototypes. • Bridges gap between unsupervised sequence-free distributional clustering approaches and supervised sequence model learning.