Predicting Subway Passenger Flows under Incident Situation with Causality
New studies push boundaries in AI applications, from subway passenger flow prediction to engine control and deep network explanations
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New studies push boundaries in AI applications, from subway passenger flow prediction to engine control and deep network explanations
The field of artificial intelligence (AI) has witnessed significant advancements in recent years, with researchers continually pushing the boundaries of what is possible. Five new studies, published on arXiv, demonstrate the exciting progress being made in AI research, with applications ranging from predictive modeling and reinforcement learning to neural networks and deep network explanations.
One study, "Predicting Subway Passenger Flows under Incident Situation with Causality" (Source 1), addresses the challenge of predicting passenger flows in subway systems during incident situations. The researchers propose a two-stage method that separates predictions under normal conditions and the causal effects of incidents. This approach enables the identification of significant effects and the training of a causal effect prediction model, which can forecast the impact of incidents on passenger flows.
Another study, "Safe Reinforcement Learning for Real-World Engine Control" (Source 2), introduces a toolchain for applying reinforcement learning (RL) in safety-critical real-world environments. The researchers demonstrate the application of RL in transient load control on a single-cylinder internal combustion engine testbench. This work highlights the potential of RL in addressing complex control problems, while also emphasizing the need for safety monitoring to mitigate risks.
In the realm of neural networks, a study titled "A Statistical Learning Perspective on Semi-dual Adversarial Neural Optimal Transport Solvers" (Source 3) provides a theoretical investigation of adversarial minimax solvers based on semi-dual formulations of optimal transport problems. The researchers establish upper bounds on the generalization error of an approximate optimal transport map, paving the way for further research in this area.
The concept of oracular programming is introduced in "Oracular Programming: A Modular Foundation for Building LLM-Enabled Software" (Source 4). This paradigm integrates traditional, explicit computations with inductive oracles, such as large language models (LLMs). The researchers propose a modular foundation for building LLM-enabled software, which enables the composition of computations under enforceable contracts.
Lastly, a study on "Using the Path of Least Resistance to Explain Deep Networks" (Source 5) identifies the limitations of existing attribution methods, such as Integrated Gradients (IG). The researchers propose an alternative approach, Geodesic Integrated Gradients (GIG), which computes attributions by integrating gradients along geodesics under a model-induced Riemannian metric. This work provides a new axiom, No-Cancellation Completeness (NCC), which strengthens completeness bounds for attribution methods.
These studies demonstrate the exciting progress being made in AI research, with applications ranging from predictive modeling and reinforcement learning to neural networks and deep network explanations. As researchers continue to push the boundaries of what is possible, we can expect to see significant advancements in various fields, from transportation and energy to computer science and engineering.
AI-Synthesized Content
This article was synthesized by Fulqrum AI from 5 trusted sources, combining multiple perspectives into a comprehensive summary. All source references are listed below.
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Sources (5)
Predicting Subway Passenger Flows under Incident Situation with Causality
Safe Reinforcement Learning for Real-World Engine Control
A Statistical Learning Perspective on Semi-dual Adversarial Neural Optimal Transport Solvers
Oracular Programming: A Modular Foundation for Building LLM-Enabled Software
Using the Path of Least Resistance to Explain Deep Networks
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