Search engines play a crucial role in today’s information environment. Yet, political and news-related (PNR) search engine use remains understudied, mainly due to the lack of suitable measurement methods to identify PNR searches. Existing research focuses on specific events, topics, or news articles, neglecting the broader scope of PNR search. Furthermore, self-reporting issues have led researchers to use browsing history data, but scalable methods for analysing such data are limited. This paper addresses these gaps by comparing five computational methods to identify PNR searches in browsing data, including browsing sequences, context-enhanced dictionary, Traditional Supervised Machine Learning (SML), Transformer-based SML, and ChatGPT classification. Using Dutch Google searches as a test case, we use Dutch browsing history data obtained via data donations in May 2022 linked to surveys (Nusers = 315; Nrecords = 9, 868, 209; Nsearches = 697, 359), along with 35.5k manually annotated search terms. The findings highlight substantial variation in accuracy, with some methods being more suited for narrower topics. We recommend a two-step approach, using ChatGPT for automated classification followed by human evaluation. This methodology can inform future empirical research on PNR search engine use.