𝔖 Bobbio Scriptorium
✦   LIBER   ✦

Learning grammatical structure with Echo State Networks

✍ Scribed by Matthew H. Tong; Adam D. Bickett; Eric M. Christiansen; Garrison W. Cottrell


Publisher
Elsevier Science
Year
2007
Tongue
English
Weight
734 KB
Volume
20
Category
Article
ISSN
0893-6080

No coin nor oath required. For personal study only.

✦ Synopsis


Echo State Networks (ESNs) have been shown to be effective for a number of tasks, including motor control, dynamic time series prediction, and memorizing musical sequences. However, their performance on natural language tasks has been largely unexplored until now. Simple Recurrent Networks (SRNs) have a long history in language modeling and show a striking similarity in architecture to ESNs. A comparison of SRNs and ESNs on a natural language task is therefore a natural choice for experimentation. Elman applies SRNs to a standard task in statistical NLP: predicting the next word in a corpus, given the previous words. Using a simple context-free grammar and an SRN with backpropagation through time (BPTT), Elman showed that the network was able to learn internal representations that were sensitive to linguistic processes that were useful for the prediction task. Here, using ESNs, we show that training such internal representations is unnecessary to achieve levels of performance comparable to SRNs. We also compare the processing capabilities of ESNs to bigrams and trigrams. Due to some unexpected regularities of Elman's grammar, these statistical techniques are capable of maintaining dependencies over greater distances than might be initially expected. However, we show that the memory of ESNs in this word-prediction task, although noisy, extends significantly beyond that of bigrams and trigrams, enabling ESNs to make good predictions of verb agreement at distances over which these methods operate at chance. Overall, our results indicate a surprising ability of ESNs to learn a grammar, suggesting that they form useful internal representations without learning them.


📜 SIMILAR VOLUMES


Network analysis of resting state EEG in
✍ Maria Boersma; Dirk J.A. Smit; Henrica M.A. de Bie; G. Caroline M. Van Baal; Dor 📂 Article 📅 2011 🏛 John Wiley and Sons 🌐 English ⚖ 581 KB

## Abstract During childhood, brain structure and function changes substantially. Recently, graph theory has been introduced to model connectivity in the brain. Small‐world networks, such as the brain, combine optimal properties of both ordered and random networks, i.e., high clustering and short p

A novel architecture in solid state with
✍ Goverdhan Mehta; Ramdas Vidya 📂 Article 📅 1998 🏛 Elsevier Science 🌐 French ⚖ 244 KB

In the crystal, the "oxa-bowl" 3 (C10H1005) possesses a fascinating columnar architecture built around numerous C-H...O interactions, in which all the ten CH units and five oxygen atoms (through both the lone pairs) are involved.