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Titlebook: Web Information Systems Engineering – WISE 2022; 23rd International C Richard Chbeir,Helen Huang,Yanchun Zhang Conference proceedings 2022

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Domain Adversarial Training for Aspect-Based Sentiment Analysisin combinations with testing accuracies ranging from 37% up until 77%, showing both the limitations and benefits of this approach. Once DAT is able to find the similarities between domains, it produces good results, but if the domains are too distant, it is not capable of generating domain-invariant
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Domain Adversarial Training for Aspect-Based Sentiment Analysisin combinations with testing accuracies ranging from 37% up until 77%, showing both the limitations and benefits of this approach. Once DAT is able to find the similarities between domains, it produces good results, but if the domains are too distant, it is not capable of generating domain-invariant
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Hotspots Recommender: Spatio-Temporal Prediction of Ride-Hailing and Taxicab Servicesemonstrated sensible accuracy which is comparable to baseline models. We demonstrate the benefits of our hotspot recommender algorithm over two scenarios considering the NYC dataset and our demand and supply prediction model in terms of suggesting the best hotspots taxicab drivers should target.
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Towards a Co-selection Approach for a Global Explainability of Black Box Machine Learning Modelsual explanations based on a similarity preserving approach. Unlike submodular optimization, in our method the problem is considered as a co-selection task. This approach achieves a co-selection of instances and features over the explanations provided by any explainer. The proposed framework is more
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