Discriminative Statistical Model Structure
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A Discriminative Statistical Model Structure is a statistical model structure that was produced by a discriminative modeling system (which accepts a discriminative model family).
- AKA: Discriminatively Trained Model.
- Context:
- It can range from being a Discriminative Classification Model, to being a Discriminative Ranking Model, to being a Discriminative Estimation Model.
- It can be a Discriminative Classifier or a Discriminative Estimator.
- It can (typically) Optimize the Posterior Probability ([math]\displaystyle{ p(\bf{Y}|\bf{X}) }[/math]) for some associated Training Data.
- It can estimate a Class Conditional Probability Function.
- It cannot, unlike a Generative Model Instance, be used for a Data Generation Task, because it does not model a Joint Distribution ([math]\displaystyle{ P(t) }[/math]).
- It can range from being a Discriminative Classification Model, to being a Discriminative Ranking Model, to being a Discriminative Estimation Model.
- Example(s):
- Counter-Example(s):
- See: Conditional Likelihood, Discriminative Learning Algorithm.
References
2009
- (McCallum et al., 2009) ⇒ Andrew McCallum, Karl Schultz, and Sameer Singh. (2009). “FACTORIE: Probabilistic Programming via Imperatively Defined Factor Graphs..” In: Advances in Neural Information Processing Systems 22 (NIPS 2009).
- QUOTE: Discriminatively trained undirected graphical models have had wide empirical success, and there has been increasing interest in toolkits that ease their application to complex relational data.