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Homotopy-based SemiSupervised Hidden Markov Models for Sequence Labeling Gholamreza Haffari Anoop Sarkar Presenter: Milan Tofiloski Natural Language Lab Simon Fraser university 1 Outline • Motivation & Contributions • Experiments • Homotopy method • More experiments 2 Maximum Likelihood Principle • Parameter setting for the joint probability of input-output which maximizes probability of the given data: • L : labeled data • U : unlabeled data 3 Deficiency of MLE • Usually |U| >> |L|, then • Which means the relationship of input-output is ignored when estimating the parameters ! – MLE focuses on modeling the input distribution P(x) – But we are interested in modeling the joint distribution P(x,y) 4 Remedy for the Deficiency • Balance the effect of lab and unlab data: • Find which maximally take advantage of lab and unlab data • MLE 5 An experiment with HMM Lower is Better MLE Performance • MLE can hurt the performance • Balancing lab and unlab data related terms is beneficial 6 Our Contributions 1. Introducing a principled way to choose for HMM in sequence labeling (tagging) tasks 2. Introducing an efficient dynamic programming algorithm to compute second order statistics in HMM 7 Outline • Motivation & Contributions • Experiments • Homotopy method • More experiments 8 Task • Field segmentation in information extraction • 13 tag fields: AUTHOR, TITLE, … EDITOR EDITOR A . TITLE Models for - EDITOR Elmagarmid TITLE PUB EDITOR TITLE , EDITOR EDITOR editor TITLE . TITLE Transaction TITLE Advanced Database Applications PUB Kaufmann PUB DATE DATE , 1992 . TITLE , PUB Morgan 9 Experimental Setup • Use an HMM with 13 states – Freeze the transition (state->state) probabilities to what has been observed in the lab data – Use the Homotopy method to just learn the emission (state->alphabet) probabilities – Do add- smoothing for the initial values of emission and transition probabilities • Data statistics: – Average seq. length : 36.7 – Average number of segments in a seq: 5.4 – Size of Lab/Unlab data is 300/700 10 Baselines • Held-out: put aside part of the lab data as a held-out set, and use it t choose • Oracle: choose based on test data using per position accuracy • Supervised: forgetting about unlab data, and just using lab data 11 Homotopy vs Baselines Higher is Better Even very small values of can be useful. In homotopy =.004, and in supervised = 0 • Sequence of most probable states decoding See paper for more results 12 Outline • Motivation & Contributions • Experiments • Homotopy method • More experiments 13 Path of Solutions • Look at as changes from 0 to 1 • Choose the best based on the path Discontinuity Bifurcation 14 EMfor HMM • Let • To find best parameter values which (locally) maximizes the objective function for a fixed : be a state->state or state->observation event in our HMM Repeat until convergence EM() 15 Fixed Points of EM • Useful fact • At the fixed points , then • This is similar to using Homotopy for root finding – Same numerical techniques should be applicable here 16 Homotopy for Root Finding • To find a root of G() – start from a root of a simple problem F() – trace the roots of intermediate problems while morphing F to G • To find which satisfy the above: – Set the derivative to zero: gives differential equation – Numerically solve the resulting differential eqn. 17 Solving the Differential Eqn Jaccobian of EM1 M . v=0 Repeat until – Update in a proper direction parallel to v=Kernel(M) – Update M 18 Jaccobian of EM1 See the paper for details • So, we need to compute the covariance matrix of the events • The entry in the row and column of the covariance matrix is Challenging for HMM 19 Forward-Backward Expected Quadratic Counts for HMM • Dynamic programming algorithm to efficiently compute • Pre-compute a table Zx for each sequence … k2 k1 … xi xi+1 … xj … … • Having table Zx, the EQC can be computed efficiently – The time complexity is where K is the number of states 20 in the HMM (see paper for more details) How to Choose based on Path • monotone: the first point at which the monotonocity of changes • MaxEnt: choose for which the model has maximum entropy on the unlab data • minEig: when solving the diff eqn, consider the minimum singular value of the matrix M. Across rounds, choose for which the minimum singular value is the smallest 21 Outline • Motivation & Contributions • Experiments • Homotopy method • More experiments 22 Varying the Size of Unlab Data • The three Homotopy-based methods outperform EM • maxEnt outperforms minEig and monotone • minEig and monotone have similar performances Size of the labeled data: 100 23 Picked Values 24 Picked Values • EM gives higher weight to unlabeled data compared to Homotopy-based method • selected by − maxEnt are much smaller than those selected by minEig and monotone − minEig and monotone are close 25 Conclusion and Future Work • Using EM can hurt performance in the case |L| << |U| • Proposed a method to alleviate this problem for HMMs for seq. labeling tasks • To speed up the method – Using sampling to find approximation to covariance matrix – Using faster methods in recovering the solution path, e.g. predictor-corrector 26 Questions? 27 Is Oracle outperformed by Homotopy? • No! - The performance measure used in selecting in oracle method may be different from that used in comparing homotopy and oracle - The decoding alg used in oracle may be different from that used in comparing homotopy and oracle 28 Why not set ? • This adhoc way of setting has two drawbacks: - It still may hurt the performance. The proper may be much smaller than that. - In some situations, the right choice of may be a big value. Setting is very conservative and dose not fully take advantage of the available unlabeled data. 29 Homotopy vs Baselines Our method (see the paper for more results) Higher is Better – Viterbi Decoding: most probable seq of states decoding – SMS Decoding: seq of most probable states decoding 30