2023
DOI: 10.1049/cit2.12186
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Extrapolation over temporal knowledge graph via hyperbolic embedding

Abstract: Predicting potential facts in the future, Temporal Knowledge Graph (TKG) extrapolation remains challenging because of the deep dependence between the temporal association and semantic patterns of facts. Intuitively, facts (events) that happened at different timestamps have different influences on future events, which can be attributed to a hierarchy among not only facts but also relevant entities. Therefore, it is crucial to pay more attention to important entities and events when forecasting the future. Howev… Show more

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Cited by 20 publications
(3 citation statements)
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“…The most common symptoms include sleep disturbances [48,49], poor concentration [48], headache, head pressure [48], mental fatigue [50], tiredness, irritability [49], and reduced auditory sensitivity [51]. With the rapid development in the fields of deep learning and artificial intelligence, numerous efficient algorithms have demonstrated outstanding performance in noise monitoring and prediction [52,53], emission sound pressure and sound wave control [54,55], as well as the optimization of noise control systems [56,57]. These novel active noise control methods integrated with artificial intelligence effectively overcome the limitations of traditional passive noise control methods in attenuating low-frequency noise, offering new directions for future construction noise control [58,59].…”
Section: Analysis Of Critical Noise Generating Construction Processesmentioning
confidence: 99%
“…The most common symptoms include sleep disturbances [48,49], poor concentration [48], headache, head pressure [48], mental fatigue [50], tiredness, irritability [49], and reduced auditory sensitivity [51]. With the rapid development in the fields of deep learning and artificial intelligence, numerous efficient algorithms have demonstrated outstanding performance in noise monitoring and prediction [52,53], emission sound pressure and sound wave control [54,55], as well as the optimization of noise control systems [56,57]. These novel active noise control methods integrated with artificial intelligence effectively overcome the limitations of traditional passive noise control methods in attenuating low-frequency noise, offering new directions for future construction noise control [58,59].…”
Section: Analysis Of Critical Noise Generating Construction Processesmentioning
confidence: 99%
“…RoTH [34] combines hyperbolic reflections and rotations with attention to simultaneously capture hierarchical and logical patterns in a hyperbolic space. ReTIN [35] introduces real-time influence information on historical facts in hyperbolic geometric space to capture potential hierarchical structures and other rich semantic patterns.…”
Section: Machine-learning-based Modelmentioning
confidence: 99%
“…In the grey-box scenario, attackers optimise the adversarial audio by constantly querying the victim system and obtaining the corresponding score vector [13], which requires frequent access to the victim system and may expose the attacking intent. However, the internal information of the model is usually unknowable in practical scenarios [14][15][16], and the SRS may only output a speaker identity label rather than a score vector. Therefore, the black-box scenario has received more attention from the academic community.…”
Section: Introductionmentioning
confidence: 99%