In this paper we present a self-organizing neural network model of early lexical development called DevLex. The network consists of two
self-organizing maps (a growing semantic map and a growing phonological map) that are connected via associative links trained by Hebbian
learning. The model captures a number of important phenomena that occur in early lexical acquisition by children, as it allows for the
representation of a dynamically changing linguistic environment in language learning. In our simulations, DevLex develops topographically
organized representations for linguistic categories over time, models lexical confusion as a function of word density and semantic similarity,
and shows age-of-acquisition effects in the course of learning a growing lexicon. These results match up with patterns from empirical
research on lexical development, and have significant implications for models of language acquisition based on self-organizing neural
networks.