We present Grammar-Based Grounded Lexicon Learning (G2L2), a lexicalist approach toward learning a compositional and grounded meaning representation of language from grounded data, such as paired images and texts. At the core of G2L2 is a collection of lexicon entries, which map each word to a tuple of a syntactic type and a neuro-symbolic semantic program. For example, the word shiny has a syntactic type of adjective; its neuro-symbolic semantic program has the symbolic form {\lambda}x. filter(x, SHINY), where the concept SHINY is associated with a neural network embedding, which will be used to classify shiny objects. Given an input sentence, G2L2 first looks up the lexicon entries associated with each token. It then derives the meaning o...
Distributional semantic models capture word-level meaning that is useful in many natural language pr...
This paper presents the theoretical foundation of a new type of constraint-based grammars, Lexicaliz...
This paper presents a new computational model for studying the origins and evolution of compositiona...
Much is still unknown about how children learn language, but it is clear that they perform “grounded...
Keynote speechLanguage learning has been studied for decades. For a long time, the focus was on lea...
This paper presents CoLLIE: a simple, yet effective model for continual learning of how language is ...
textCommunicating with natural language interfaces is a long-standing, ultimate goal for artificial ...
One of the key challenges in grounded language acquisition is resolving the intentions of the expres...
Language is infinitely productive because syntax defines dependencies between grammatical categories...
In tasks like semantic parsing, instruction following, and question answering, standard deep network...
none3This work presents a connectionist model of the semantic-lexical system based on grounded cogni...
It is often assumed that ‘grounded’ learning tasks are beyond the scope of grammatical inference tec...
Current approaches to learning semantic representations of sentences often use prior word-level know...
We present a neural-symbolic learning model of sentence production which displays strong semantic sy...
While symbolic and statistical approaches to natural language processing have become undeniably impr...
Distributional semantic models capture word-level meaning that is useful in many natural language pr...
This paper presents the theoretical foundation of a new type of constraint-based grammars, Lexicaliz...
This paper presents a new computational model for studying the origins and evolution of compositiona...
Much is still unknown about how children learn language, but it is clear that they perform “grounded...
Keynote speechLanguage learning has been studied for decades. For a long time, the focus was on lea...
This paper presents CoLLIE: a simple, yet effective model for continual learning of how language is ...
textCommunicating with natural language interfaces is a long-standing, ultimate goal for artificial ...
One of the key challenges in grounded language acquisition is resolving the intentions of the expres...
Language is infinitely productive because syntax defines dependencies between grammatical categories...
In tasks like semantic parsing, instruction following, and question answering, standard deep network...
none3This work presents a connectionist model of the semantic-lexical system based on grounded cogni...
It is often assumed that ‘grounded’ learning tasks are beyond the scope of grammatical inference tec...
Current approaches to learning semantic representations of sentences often use prior word-level know...
We present a neural-symbolic learning model of sentence production which displays strong semantic sy...
While symbolic and statistical approaches to natural language processing have become undeniably impr...
Distributional semantic models capture word-level meaning that is useful in many natural language pr...
This paper presents the theoretical foundation of a new type of constraint-based grammars, Lexicaliz...
This paper presents a new computational model for studying the origins and evolution of compositiona...