TY - JOUR
T1 - Suicide risk level prediction and suicide trigger detection: A benchmark dataset
AU - Li, Jun
AU - Chen, Xinhong
AU - Lin, Zehang
AU - Yang, Kaiqi
AU - Leong, Hong Va
AU - Yu, Nancy Xiaonan
AU - Li, Qing
N1 - Publisher Copyright:
© 2022 The Hong Kong Institution of Engineers HKIE Transactions.
PY - 2022
Y1 - 2022
N2 - The increasing number of suicide events in recent years has set off an alarm in society. To prevent suicides, it is important to develop platforms with associated intelligent algorithms, such as those for early suicide ideation detection (SID). In general, entering people’s lives to obtain indicative information for effective SID is prohibitive due to the possible risk of privacy invasion. Social media posts provide valuable information about users’ activities, indicating important hints toward SID in a non-intrusive manner. Although multiple datasets have been collected from social media platforms for efficient SID, they either neglect many suicidal posts by searching for pre-defined keywords, or contain limited information about suicide ideation. In this paper, a newly collected dataset, which expands the coverage of suicidal posts with more fine-grained annotations of suicide risk levels and suicide triggers compared with existing datasets, is presented. Benchmarking results by a popular deep-learning model are analysed to validate the reliability and potential of the collected dataset. Furthermore, multiple application scenarios of the dataset are discussed. The proposed dataset is expected to enhance the research on suicide ideation and behaviours, and have a strong impact on SID and more importantly, suicide prevention to save invaluable lives.
AB - The increasing number of suicide events in recent years has set off an alarm in society. To prevent suicides, it is important to develop platforms with associated intelligent algorithms, such as those for early suicide ideation detection (SID). In general, entering people’s lives to obtain indicative information for effective SID is prohibitive due to the possible risk of privacy invasion. Social media posts provide valuable information about users’ activities, indicating important hints toward SID in a non-intrusive manner. Although multiple datasets have been collected from social media platforms for efficient SID, they either neglect many suicidal posts by searching for pre-defined keywords, or contain limited information about suicide ideation. In this paper, a newly collected dataset, which expands the coverage of suicidal posts with more fine-grained annotations of suicide risk levels and suicide triggers compared with existing datasets, is presented. Benchmarking results by a popular deep-learning model are analysed to validate the reliability and potential of the collected dataset. Furthermore, multiple application scenarios of the dataset are discussed. The proposed dataset is expected to enhance the research on suicide ideation and behaviours, and have a strong impact on SID and more importantly, suicide prevention to save invaluable lives.
KW - Benchmark dataset
KW - Suicide ideation
KW - Suicide prevention
KW - Suicide risk level prediction
KW - Suicide trigger detection
UR - https://www.scopus.com/pages/publications/85148593580
U2 - 10.33430/V29N4THIE-2022-0031
DO - 10.33430/V29N4THIE-2022-0031
M3 - Journal article
AN - SCOPUS:85148593580
SN - 1023-697X
VL - 29
SP - 268
EP - 282
JO - HKIE Transactions Hong Kong Institution of Engineers
JF - HKIE Transactions Hong Kong Institution of Engineers
IS - 4
ER -