Theoretical thesis.Bibliography: pages 58-62.1. Introduction -- 2. Literature review -- 3. Name entity recognition on Trove newspaper text -- 4. Document classiffcation on Trove newspaper texts -- 5. Discussion -- 6. Conclusion -- Bibliography.A Named Entity Recognition (NER) objective is to extract and to classify atomic entities in text such as proper names (Names and locations), temporal expressions and other specific notation identification. In this project, we will apply NER methods to historical newspaper text taken from the Trove archive in the National Library of Australia. We will present an evaluation of various available NER systems on a hand-annotated sample of newspaper text. We will then present the result of applying the system to the whole corpus of text. Even when the occurrence of a given name is known across a large data set, there may be many individuals who share that name; this is particularly evident in the Trove corpus since it spans a long time period (1803-1959). In the second part of this project we will develop methods to try to classify different individuals with the same name. In particular, we will classify names as either Politician, Entertainer or other based on the documents that they occur in.Mode of access: World wide web1 online resource (ix, 62 pages) graphs, table