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Efficient algorithms for exact inference in sequence labeling SVMs
Alexander Bauer
, Nico Gornitz
, Franziska Biegler
,
Klaus Robert Muller
*
, Marius Kloft
*
Corresponding author for this work
Department of Artificial Intelligence
Research output
:
Contribution to journal
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Article
›
peer-review
16
Citations (Scopus)
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Keyphrases
Sequence Labeling
100%
Exact Inference
100%
Structured Prediction
100%
Polynomial Time
50%
Loss Function
50%
Popular
50%
Inference Problem
50%
Input Space
50%
Large Classes
50%
Feature Map
50%
Problem-based
50%
Arbitrary Inputs
50%
Decomposability
50%
Label Sequence Learning
50%
Inference Algorithms
50%
Maximum Margin
50%
Generic Algorithm
50%
Functional Dependency
50%
Efficient Inference
50%
Joint Feature
50%
Output Space
50%
Computer Science
Support Vector Machine
100%
Polynomial Time
100%
Efficient Algorithm
100%
Generic Algorithm
100%
Functional Dependency
100%
Feature Map
100%