Demystifying oral history with natural language processing and data analytics: a case study of the Densho digital collection.

Autor: Chen, Haihua, Kim, Jeonghyun, Chen, Jiangping, Sakata, Aisa
Zdroj: Electronic Library; 2024, Vol. 42 Issue 4, p643-663, 21p
Abstrakt: Purpose: This study aims to explore the applications of natural language processing (NLP) and data analytics in understanding large-scale digital collections in oral history archives. Design/methodology/approach: NLP and data analytics were used to analyse the oral interview transcripts of 904 survivors of the Japanese American incarceration camps collected from Densho Digital Repository, relying specifically on descriptive analysis, keyword extraction, topic modelling and sentiment analysis (SA). Findings: The researchers found multiple geographic areas of large residential communities of ethnic Japanese people and the place names of the concentration camps. The keywords and topics extracted reflect the deplorable conditions and militaristic nature of the camps and the forced labour of the internees. When remembering history, the main focus for the narrators remains the redress and reparation movement to obtain the restitution of their civil rights. SA further found that the forcible removal and incarceration of Japanese Americans during Second World War negatively impacted and brought deep trauma to the narrators. Originality/value: This case study demonstrated how NLP and data analytics could be applied to analyse oral history archives and open avenues for discovery. Archival researchers and the general public may benefit from this type of analysis in making connections between temporal, spatial and emotional elements, which will contribute to a holistic understanding of individuals and communities in terms of their collective memory. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index