Personality facets recognition from text
This work addresses the challenge of labeling text data with personality facets more efficiently for researchers in natural language processing, though it is incremental as it builds on existing trait recognition methods.
The paper tackled the problem of recognizing personality facets from text using only shorter personality inventories, providing a low-cost model and reference results for further studies.
Fundamental Big Five personality traits (e.g., Extraversion) and their facets (e.g., Activity) are known to correlate with a broad range of linguistic features and, accordingly, the recognition of personality traits from text is a well-known Natural Language Processing task. Labelling text data with facets information, however, may require the use of lengthy personality inventories, and perhaps for that reason existing computational models of this kind are usually limited to the recognition of the fundamental traits. Based on these observations, this paper investigates the issue of personality facets recognition from text labelled only with information available from a shorter personality inventory. In doing so, we provide a low-cost model for the recognition of certain personality facets, and present reference results for further studies in this field.