Bayesian Analogy with Relational Transformations (BART) is a discriminative model that can learn comparative relations from non-relational inputs (Lu, Chen & Holyoak, 2012). Here we show that BART can be extended to solve inference problems that require generation (rather than classification) of relation instances. BART can use its generative capacity to perform hypothetical reasoning, enabling it to make quasi-deductive transitive inferences (e.g., “If A is larger than B, and B is larger than C, is A larger than C?”). The extended model can also generate human-like instantiations of a learned relation (e.g., answering the question, “What is an animal that is smaller than a dog?”). These modeling results suggest that discriminative mode...
A fundamental issue for theories of human induction is to specify constraints on potential inference...
Relational concepts play a central role in human perception and cognition, but little is known about...
upon the output of an existing relation extrac-tor by augmenting relations that are explicitly state...
How do humans acquire relational concepts such as larger, which are essential for analogical inferen...
A key property of human cognition is its ability to generate novel predictions about unfamiliar situ...
Research on discrimination-based transitive inference (TI) has demonstrated a widespread capacity fo...
Everyday inductive reasoning draws on many kinds of knowledge, including knowledge about relationshi...
Computational models of verbal analogy and relational similarity judgments can employ different type...
By middle childhood, humans are able to learn abstract semantic relations (e.g., antonym, synonym, c...
Relationships between concepts account for a large proportion of semantic knowledge. We present a no...
My primary research motivation is the development of a truly generic Machine Learning engine. Toward...
The human ability to flexibly reason using analogies with domain-general content depends on mechanis...
People readily generalize knowledge to novel domains and stimuli. We present a theory, instantiated ...
Relational concepts play a central role in human perception and cognition, but little is known about...
We present a theory of how relational inference and generalization can be accomplished within a cogn...
A fundamental issue for theories of human induction is to specify constraints on potential inference...
Relational concepts play a central role in human perception and cognition, but little is known about...
upon the output of an existing relation extrac-tor by augmenting relations that are explicitly state...
How do humans acquire relational concepts such as larger, which are essential for analogical inferen...
A key property of human cognition is its ability to generate novel predictions about unfamiliar situ...
Research on discrimination-based transitive inference (TI) has demonstrated a widespread capacity fo...
Everyday inductive reasoning draws on many kinds of knowledge, including knowledge about relationshi...
Computational models of verbal analogy and relational similarity judgments can employ different type...
By middle childhood, humans are able to learn abstract semantic relations (e.g., antonym, synonym, c...
Relationships between concepts account for a large proportion of semantic knowledge. We present a no...
My primary research motivation is the development of a truly generic Machine Learning engine. Toward...
The human ability to flexibly reason using analogies with domain-general content depends on mechanis...
People readily generalize knowledge to novel domains and stimuli. We present a theory, instantiated ...
Relational concepts play a central role in human perception and cognition, but little is known about...
We present a theory of how relational inference and generalization can be accomplished within a cogn...
A fundamental issue for theories of human induction is to specify constraints on potential inference...
Relational concepts play a central role in human perception and cognition, but little is known about...
upon the output of an existing relation extrac-tor by augmenting relations that are explicitly state...