Artigo Acesso aberto Revisado por pares

ORTHOGRAPHIC CASE RESTORATION USING SUPERVISED LEARNING WITHOUT MANUAL ANNOTATION

2004; World Scientific; Volume: 13; Issue: 01 Linguagem: Inglês

10.1142/s0218213004001454

ISSN

1793-6349

Autores

Cheng Niu, Wei Li, Jihong Ding, Rohini K. Srihari,

Tópico(s)

Speech and dialogue systems

Resumo

One challenge in text processing is the treatment of case insensitive documents such as speech recognition results. The traditional approach is to re-train a language model excluding case-related features. This paper presents an alternative two-step approach whereby a preprocessing module (Step 1) is designed to restore case-sensitive form which is subsequently processed by the original system (Step 2). Step 1 is mainly implemented as a Hidden Markov Model trained on a large raw corpus of case sensitive documents. It is demonstrated that this approach (i) outperforms the feature exclusion approach for named entity tagging, (ii) leads to limited degradation for parsing, relationship extraction and case insensitive question answering, (iii) reduces system complexity, and (iv) has wide applicability: the restored text can be used in both statistical model and rule-based systems.

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