We discuss the automatic generation of \emph{thematic lexicons} by means of \emph{term categorization}, a novel task employing techniques from information retrieval (IR) and machine learning (ML). Specifically, we view the generation of such lexicons as an iterative process of learning previously unknown associations between terms and \emph{themes} (i.e.\ disciplines, or fields of activity). The process is iterative, in that it generates, for each $c_{i}$ in a set $C=\{c_{1},\ldots,c_{m}\}$ of themes, a sequence $L^{i}_{0}\subseteq L^{i}_{1}\subseteq \ldots \subseteq L^{i}_{n}$ of lexicons, bootstrapping from an initial lexicon $L^{i}_{0}$ and a set of text corpora $\Theta=\{\theta_{0},\ldots,\theta_{n-1}\}$ given as input. The method is ...