Domain Transfer via Analogy 1 Running head: DOMAIN TRANSFER VIA CROSS-DOMAIN ANALOGY Domain Transfer via Cross-Domain Analogy
نویسندگان
چکیده
Analogical learning has long been seen as a powerful way of extending the reach of one‟s knowledge. We present the domain transfer via analogy (DTA) method for learning new domain theories via cross-domain analogy. Our model uses analogies between pairs of textbook example problems, or worked solutions, to create a domain mapping between a familiar and a new domain. This mapping allows us to initialize a new domain theory. After this initialization, another analogy is made between the domain theories themselves, providing additional conjectures about the new domain. We present two experiments in which our model learns rotational kinematics by an analogy with translational kinematics, and vice versa. These learning rates outperform those from a version of the system that is incrementally given the correct domain theory. Domain Transfer via Analogy 3 Domain Transfer via Cross-Domain Analogy
منابع مشابه
Domain transfer via cross-domain analogy
Analogical learning has long been seen as a powerful way of extending the reach of one’s knowledge. We present domain transfer via analogy (DTA) as a method for learning new domain theories via cross-domain analogy. Our model uses analogies between pairs of textbook example problems, or worked solutions, to create a domain mapping between a familiar and a new domain. This mapping allows us to i...
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