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Multi-Agent Dynamics & Mixed-Motive Cooperation
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Audio Source Separation using AI
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Using AI For Buildingβs Energy Management
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Behavioral Representation Learning from Animal Poses.
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See Allgraded | 197877 | ||
graded | 197876 | ||
graded | 197875 |
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Round 2 - Active | Claim AWS Credits by beating the baseline
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See Allgraded | 197877 | ||
graded | 197876 | ||
graded | 197875 |
Round 2 - Active | Claim AWS Credits by beating the baseline
Latest submissions
See Allgraded | 197599 | ||
graded | 197592 | ||
graded | 197552 |
Music source separation of an audio signal into separate tracks for vocals, bass, drums, and other
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Participant | Rating |
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IRL Multi Agent Behavior Challenge 2022View
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AlphaSound Sound Demixing Challenge 2023View
Multi Agent Behavior Challenge 2022
[Round-2 Update] $400 AWS Credits Per Team - How To Win & Claim Them
Over 2 years agoFor mouse triplet:
Submission id: 191620
How much did you improve over the relevant baseline score?: 0.217 β 0.258
For ant-beetle:
Submission id: 191527
How much did you improve over the relevant baseline score?: 0.557 β 0.596
A brief intro about you: As part of our work, we analyze rat behavior as a step towards developing CNS drugs.
Thanks for an interesting challenge!
Share your solutions!
Over 2 years agoOur main solution consisted of three parts: A large pre-trained vision transformer model (microsoft/beit-large-patch16-512 Β· Hugging Face), a modified version of the baseline SimCLR model, and a large number of hand-crafted features (using the keypoints). These were combined by weighted PCA, where the weight was both column-wise (with different weights given to the three parts above), and row-wise (with more weight given to frames with a lot of movement).
We also tried different ways of encoding the time series of keypoints, in particular different BERT-inspired methods, but also ROCKET ([1910.13051] ROCKET: Exceptionally fast and accurate time series classification using random convolutional kernels). However, the results we obtained were not good enough to include in the main solution.