features we use to communicate. Recent statistics in suicide prevention show that young
people are increasingly posting their last words online. In this paper, we investigate whether
it is possible to automatically identify suicide notes and discern them from other types of
online discourse based on analysis of sentiments and linguistic features. Using supervised
learning, we show that our model achieves an accuracy of 86.6%, outperforming previous …