This study introduces the “framing element” method, an alternative approach to computational news framing detection. Rooted in a constructionist framing analysis framework, it identifies frames as packages of framing elements, including actors (individuals and organizations) and topics, extending beyond topic-focused methods in prior unsupervised analyses. Compared with latent Dirichlet allocation (LDA)- and Bidirectional Encoder Representations from Transformers (BERT)-based approaches on 1,300 U.S. gun violence news articles, this method addresses LDA’s limitations by focusing on high-level framing elements rather than keywords and is less labor-intensive than BERT-based supervised learning. Supporting both inductive and deductive analyses, it achieves comparable results to LDA while uncovering a previously unidentified gun violence frame.
