2018 IEEE International Conference on Big Data (Big Data) 2018
DOI: 10.1109/bigdata.2018.8622304
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Lifelong Learning Memory Networks for Aspect Sentiment Classification

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Cited by 44 publications
(15 citation statements)
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“…Shu et al (2017) used LL for aspect extraction, which is a different problem. Wang et al (2018) used LL for ASC, but improved only the new task and did not deal with CF. Existing CL systems SRK (Lv et al, 2019), KAN (Ke et al, 2020b) and L2PG (Qin et al, 2020) are for document sentiment classification, but not ASC.…”
Section: Continual Learning Existing Work Has Mainly Focused On Dealing With Catastrophic Forgetting (Cf)mentioning
confidence: 99%
“…Shu et al (2017) used LL for aspect extraction, which is a different problem. Wang et al (2018) used LL for ASC, but improved only the new task and did not deal with CF. Existing CL systems SRK (Lv et al, 2019), KAN (Ke et al, 2020b) and L2PG (Qin et al, 2020) are for document sentiment classification, but not ASC.…”
Section: Continual Learning Existing Work Has Mainly Focused On Dealing With Catastrophic Forgetting (Cf)mentioning
confidence: 99%
“…L2PG (Qin et al, 2020) uses a neural network but improves only the new task learning for DSC. Wang et al (2018) worked on ASC, but since they improve only the new task learning, they did not deal with CF. Each task uses a separate network.…”
Section: Related Workmentioning
confidence: 99%
“…Also related is the existing research about domain and context dependent sentiment. First, despite the fact that several researchers have studied context dependent sentiment words, which are based on sentences and topic/aspect context (Wilson et al, 2005;Ding et al, 2008;Choi and Cardie, 2008;Wu and Wen, 2010;Jijkoun et al, 2010;Lu et al, 2011;Zhao et al, 2012;Kessler and Schütze, 2012;Teng et al, 2016;Wang et al, 2016Wang et al, , 2018aLi et al, 2018a), our work is based on domains. Second, while the studies on transfer learning or domain adaptation for sentiment analysis deal with domain information (Bhatt et al, 2015;Yu and Jiang, 2016;Li et al, 2018b), our work does not lie in this direction.…”
Section: Related Workmentioning
confidence: 99%