Explanation-based learning
Encyclopedia
Explanation-based learning (EBL) is a form of machine learning
Machine learning
Machine learning, a branch of artificial intelligence, is a scientific discipline concerned with the design and development of algorithms that allow computers to evolve behaviors based on empirical data, such as from sensor data or databases...

 that exploits a very strong, or even perfect, domain theory
Domain theory
Domain theory is a branch of mathematics that studies special kinds of partially ordered sets commonly called domains. Consequently, domain theory can be considered as a branch of order theory. The field has major applications in computer science, where it is used to specify denotational...

 to make generalizations or form concepts from training examples.

EBL software takes four inputs:
  • a hypothesis space (the set of all possible conclusions)
  • a domain theory (axioms about a domain of interest)
  • training examples (specific facts that rule out some possible hypotheses)
  • operationality criteria (criteria for determining which features in the domain are efficiently recognizable, e.g. which features are directly detectable using sensors)


An example of EBL using a perfect domain theory is a program that learns to play chess
Chess
Chess is a two-player board game played on a chessboard, a square-checkered board with 64 squares arranged in an eight-by-eight grid. It is one of the world's most popular games, played by millions of people worldwide at home, in clubs, online, by correspondence, and in tournaments.Each player...

 by being shown examples. A specific chess position that contains an important feature, say, "Forced loss of black queen in two moves," includes many irrelevant features, such as the specific scattering of pawns on the board. EBL can take a single training example and determine what are the relevant features in order to form a generalization.

A domain theory is perfect or complete if it contains, in principle, all information needed to decide any question about the domain. For example, the domain theory for chess is simply the rules of chess. Knowing the rules, in principle it is possible to deduce the best move in any situation. However, actually making such a deduction is impossible in practice due to combinatoric explosion. EBL uses training examples to make searching for deductive consequences of a domain theory efficient in practice.

In essence, an EBL system works by finding a way to deduce each training example from the system's existing database of domain theory. Having a short proof
Proof
Proof may refer to:* Proof , sufficient evidence or argument for the truth of a proposition* Formal proof* Mathematical proof, a convincing demonstration that some mathematical statement is necessarily true...

of the training example extends the domain-theory database, enabling the EBL system to find and classify future examples that are similar to the training example very quickly.
The main drawback of the method---the cost of applying the learned proof macros, as these become numerous---was analyzed by Minton.

An especially good application domain for EBL is natural language processing (NLP). Here a rich domain theory, i.e., a natural language grammar---although neither perfect nor complete, is tuned to a particular application or particular language usage, using a treebank (training examples). Rayner pioneered this work. The first successful industrial application was to a commercial NL interface to relational databases. The method has been successfully applied to several large-scale natural language parsing system, where the utility problem was solved by omitting the original grammar (domain theory) and using specialized LR-parsing techniques, resulting in huge speed-ups, at a cost in coverage, but with a gain in disambiguation.
EBL-like techniques have also been applied to surface generation, the converse of parsing.

When applying EBL to NLP, the operationality criteria can be hand-crafted, or can be
inferred from the treebank using either the entropy of its or-nodes
or a target coverage/disambiguation trade-off (= recall/precision trade-off = f-score).
EBL can also be used to compile grammar-based language models for speech recognition, from general unification grammars.
Note how the utility problem, first exposed by Minton, was solved by discarding the original grammar/domain theory, and that the quoted articles tend to contain the phrase grammar specialization---quite the opposite of the original term explanation-based generalization. Perhaps the best name for this technique would be data-driven search space reduction.
Other people who worked on EBL for NLP include Guenther Neumann, Aravind Joshi, Srinivas Bangalore, and Khalil Sima'an.
The source of this article is wikipedia, the free encyclopedia.  The text of this article is licensed under the GFDL.
 
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