Less is More: Non-uniform Road Segments are Efficient for Bus Arrival Prediction

arXiv — cs.LGTuesday, December 9, 2025 at 5:00:00 AM
  • A recent study highlights the inefficiency of traditional uniform segmentation methods in bus arrival time prediction, proposing a novel Reinforcement Learning (RL)
  • This development is significant as it enhances the efficiency of bus arrival predictions, potentially leading to better public transport planning and improved commuter experiences. By utilizing RL, the approach adapts to varying road conditions, which is crucial for real
  • The introduction of adaptive methods in transportation prediction reflects a broader trend in artificial intelligence, where machine learning techniques are increasingly applied to optimize complex systems. This shift emphasizes the importance of context
— via World Pulse Now AI Editorial System

Was this article worth reading? Share it

Recommended apps based on your readingExplore all apps
Continue Readings
Rewarding the Journey, Not Just the Destination: A Composite Path and Answer Self-Scoring Reward Mechanism for Test-Time Reinforcement Learning
PositiveArtificial Intelligence
A novel reward mechanism named COMPASS has been introduced to enhance test-time reinforcement learning (RL) for large language models (LLMs). This mechanism allows models to autonomously learn from unlabeled data, addressing the scalability challenges faced by traditional RL methods that rely heavily on human-curated data for reward modeling.
Learning to Pose Problems: Reasoning-Driven and Solver-Adaptive Data Synthesis for Large Reasoning Models
PositiveArtificial Intelligence
A new study presents a problem generator designed to enhance data synthesis for large reasoning models, addressing challenges such as indiscriminate problem generation and lack of reasoning in problem creation. This generator adapts problem difficulty based on the solver's ability and incorporates feedback as a reward signal to improve future problem design.
Knowledge Adaptation as Posterior Correction
NeutralArtificial Intelligence
A recent study titled 'Knowledge Adaptation as Posterior Correction' explores the mechanisms by which AI models can learn to adapt more rapidly, akin to human and animal learning. The research highlights that adaptation can be viewed as a correction of previous posteriors, with various existing methods in continual learning, federated learning, and model merging aligning with this principle.
SynBullying: A Multi LLM Synthetic Conversational Dataset for Cyberbullying Detection
NeutralArtificial Intelligence
The introduction of SynBullying marks a significant advancement in the field of cyberbullying detection, offering a synthetic multi-LLM conversational dataset designed to simulate realistic bullying interactions. This dataset emphasizes conversational structure, context-aware annotations, and fine-grained labeling, providing a comprehensive tool for researchers and developers in the AI domain.
Glass Surface Detection: Leveraging Reflection Dynamics in Flash/No-flash Imagery
PositiveArtificial Intelligence
A new study has introduced a method for glass surface detection that leverages the dynamics of reflections in both flash and no-flash imagery. This approach addresses the challenges posed by the transparent and featureless nature of glass, which has traditionally hindered accurate localization in computer vision tasks. The method utilizes variations in illumination intensity to enhance detection accuracy, marking a significant advancement in the field.
Escaping the Verifier: Learning to Reason via Demonstrations
PositiveArtificial Intelligence
A new method called RARO (Relativistic Adversarial Reasoning Optimization) has been introduced to enhance the reasoning capabilities of Large Language Models (LLMs) by utilizing expert demonstrations through Inverse Reinforcement Learning, rather than relying on task-specific verifiers. This approach sets up an adversarial game between a policy and a critic, enabling robust learning and significantly outperforming traditional verifier-free models in various evaluation tasks.
Representational Stability of Truth in Large Language Models
NeutralArtificial Intelligence
Large language models (LLMs) are increasingly utilized for factual inquiries, yet their internal representations of truth remain inadequately understood. A recent study introduces the concept of representational stability, assessing how robustly LLMs differentiate between true, false, and ambiguous statements through controlled experiments involving linear probes and model activations.
On the Temporality for Sketch Representation Learning
NeutralArtificial Intelligence
Recent research has explored the significance of temporality in sketch representation learning, revealing that treating sketches as sequences can enhance their representation quality. The study found that absolute positional encodings outperform relative ones, and non-autoregressive decoders yield better results than autoregressive ones, indicating a nuanced relationship between order and task performance.