Approaches for Automatically Tagging Affect

  • Nathanael Chambers ,
  • Joel Tetreault ,
  • James Allen

Proceedings of the AAAI Spring Symposium on Exploring Attitude and Affect in Text: Theories and Applications |

The tagging of discourse is important not only for natural language processing research, but for many applications in the social sciences as well. This paper describes an evaluation of a range of different tagging techniques to automatically determine the attitude of speakers in transcribed psychiatric dialogues. It presents results in a marriage counseling domain that classifies the attitude and emotional commitment of the participants to a particular topic of discussion. It also gives results from the Switchboard Corpus to facilitate comparison for future work. Finally, it describes a new Java tool that learns attitude classifications using our techniques and provides a flexible, easy to use platform for tagging of texts.