Cross-situational learning and social pragmatic theories are prominent mechanisms for learning word meanings (i.e., word-object pairs). In this paper, the role of reinforcement is investigated for early word-learning by an artificial agent. When exposed to a group of speakers, the agent comes to understand an initial set of vocabulary items belonging to the language used by the group. Both cross-situational learning and social pragmatic theory are taken into account. As social cues, joint attention and prosodic cues in caregiver's speech are considered. During agent-caregiver interaction, the agent selects a word from the caregiver's utterance and learns the relations between that word and the objects in its visual environment. The "novel words to novel objects" language-specific constraint is assumed for computing rewards. The models are learned by maximizing the expected reward using reinforcement learning algorithms [i.e., table-based algorithms: Q-learning, SARSA, SARSA-λ, and neural network-based algorithms: Q-learning for neural network (Q-NN), neural-fitted Q-network (NFQ), and deep Q-network (DQN)]. Neural network-based reinforcement learning models are chosen over table-based models for better generalization and quicker convergence. Simulations are carried out using mother-infant interaction CHILDES dataset for learning word-object pairings. Reinforcement is modeled in two cross-situational learning cases: (1) with joint attention (Attentional models), and (2) with joint attention and prosodic cues (Attentional-prosodic models). Attentional-prosodic models manifest superior performance to Attentional ones for the task of word-learning. The Attentional-prosodic DQN outperforms existing word-learning models for the same task.
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http://dx.doi.org/10.3389/fpsyg.2018.00005 | DOI Listing |
J Exp Child Psychol
March 2025
Department of Psychology, Trinity University, San Antonio, TX 78212, USA.
Learning verbs is an important part of learning one's native language. Prior studies have shown that children younger than 5 years can have difficulty in learning and extending new verbs. The current study extended these studies by showing children multiple events that can be compared during learning, including Japanese- and English-speaking children.
View Article and Find Full Text PDFCogn Sci
September 2024
Department of Comparative Language Science, University of Zurich.
Causation is a core feature of human cognition and language. How children learn about intricate causal meanings is yet unresolved. Here, we focus on how children learn verbs that express causation.
View Article and Find Full Text PDFCognition
December 2024
Department of Psychology, The Hebrew University of Jerusalem, Mt Scopus, Israel.
The word-frequency distributions children hear during language learning are highly skewed (Zipfian). Previous studies suggest that such skewed environments confer a learnability advantage in tasks that require the learner to discover the units that have to be learned, as in word-segmentation or cross-situational learning. This facilitative effect has been attributed to contextual facilitation from high frequency items in learning lower frequency items, and to better learning under the increased predictability (lower entropy) of skewed distributions.
View Article and Find Full Text PDFQ J Exp Psychol (Hove)
September 2024
Department of Communication Sciences and Disorders and Waisman Center, University of Wisconsin-Madison, Madison, WI, USA.
When learning new words, listeners must contend with multiple sources of ambiguity and variability. Research has revealed that learners can resolve referential ambiguity by tracking co-occurrence statistics between words and their referents across multiple exposures over time-a process termed cross-situational word learning (XSWL). However, the degree to which variability in the input, such as input from multiple speakers, and variability in learner experience, such as bilingual language experience, modulate XSWL remains unclear.
View Article and Find Full Text PDFJ Exp Psychol Learn Mem Cogn
June 2024
Department of Psychology, Arizona State University.
Cross-situational word learning (CSWL), the ability to resolve word-referent ambiguity across encounters, is a powerful mechanism found in infants, children, and adults. Yet, we know little about what predicts individual differences in CSWL, especially when learning different mapping structures, such as when referents have a single name (1:1 mapping structure) or two names (2:1 mapping structure). Here, we investigated how multilingual experience and working memory skills (visuo-spatial and phonological) contributed to CSWL of 1:1 and 2:1 structures.
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