Temporal and Object Quantification Networks
Mao, Jiayuan, Luo, Zhezheng, Gan, Chuang, Tenenbaum, Joshua B., Wu, Jiajun, Kaelbling, Leslie Pack, Ullman, Tomer D.
We present Temporal and Object Quantification Networks (TOQ-Nets), a new class of neuro-symbolic networks with a structural bias that enables them to learn to recognize complex relational-temporal events. This is done by including reasoning layers that implement finite-domain quantification over objects and time. The structure allows them to generalize directly to input instances with varying numbers of objects in temporal sequences of varying lengths. We evaluate TOQ-Nets on input domains that require recognizing event-types in terms of complex temporal relational patterns. We demonstrate that TOQ-Nets can generalize from small amounts of data to scenarios containing more objects than were present during training and to temporal warpings of input sequences.
Jun-10-2021
- Country:
- North America > United States > Massachusetts (0.14)
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- Research Report (0.64)
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