The initial Google paper stated that the Google Flu Trends predictions were 97% accurate comparing with CDC data. and over the interval 2011–2013 it consistently overestimated relative flu incidence, A 2022 study published (with commentaries) in the
International Journal of Forecasting found that Google Flu Trends was outperformed by the
recency heuristic, an instance of so-called "naive" forecasting, where the predicted flu incidence equals the most recently observed flu incidence. For all weeks from March 18, 2007, to August 9, 2015 (the horizon for which Google Flu Trends predictions are available), the mean absolute error of Google Flu Trends was 0.38 and of the recency heuristic 0.20 (both in percentage points; linear regression with a single predictor, the most recently observed flu incidence, had a mean absolute error of also 0.20, and the benchmark of random prediction had 1.80). One source of problems is that people making flu-related Google searches may know very little about how to diagnose flu; searches for flu or flu symptoms may well be researching disease symptoms that are similar to flu, but are not actually flu. Furthermore, analysis of search terms reportedly tracked by Google, such as "fever" and "cough", as well as effects of changes in their search algorithm over time, have raised concerns about the meaning of its predictions. However, one analysis concluded that "by combining GFT and lagged CDC data, as well as dynamically recalibrating GFT, we can substantially improve on the performance of GFT or the CDC alone." By re-assessing the original GFT model, researchers uncovered that the model was aggregating queries about different health conditions, something that could lead to an over-prediction of ILI rates; in the same work, a series of more advanced linear and nonlinear better-performing approaches to ILI modelling have been proposed. However, followup work was able to substantially improve the accuracy of GFT through the use of a
random forest regression model trained on both the incidence of influenza-like illness and the output of the original GFT model. ==Related systems==