scholarly journals Dynamic Public Resource Allocation Based on Human Mobility Prediction

Author(s):  
Sijie Ruan ◽  
Jie Bao ◽  
Yuxuan Liang ◽  
Ruiyuan Li ◽  
Tianfu He ◽  
...  
2021 ◽  
Vol 7 (4) ◽  
pp. 1-24
Author(s):  
Douglas Do Couto Teixeira ◽  
Aline Carneiro Viana ◽  
Jussara M. Almeida ◽  
Mrio S. Alvim

Predicting mobility-related behavior is an important yet challenging task. On the one hand, factors such as one’s routine or preferences for a few favorite locations may help in predicting their mobility. On the other hand, several contextual factors, such as variations in individual preferences, weather, traffic, or even a person’s social contacts, can affect mobility patterns and make its modeling significantly more challenging. A fundamental approach to study mobility-related behavior is to assess how predictable such behavior is, deriving theoretical limits on the accuracy that a prediction model can achieve given a specific dataset. This approach focuses on the inherent nature and fundamental patterns of human behavior captured in that dataset, filtering out factors that depend on the specificities of the prediction method adopted. However, the current state-of-the-art method to estimate predictability in human mobility suffers from two major limitations: low interpretability and hardness to incorporate external factors that are known to help mobility prediction (i.e., contextual information). In this article, we revisit this state-of-the-art method, aiming at tackling these limitations. Specifically, we conduct a thorough analysis of how this widely used method works by looking into two different metrics that are easier to understand and, at the same time, capture reasonably well the effects of the original technique. We evaluate these metrics in the context of two different mobility prediction tasks, notably, next cell and next distinct cell prediction, which have different degrees of difficulty. Additionally, we propose alternative strategies to incorporate different types of contextual information into the existing technique. Our evaluation of these strategies offer quantitative measures of the impact of adding context to the predictability estimate, revealing the challenges associated with doing so in practical scenarios.


2021 ◽  
Vol 12 (6) ◽  
pp. 1-23
Author(s):  
Shuo Tao ◽  
Jingang Jiang ◽  
Defu Lian ◽  
Kai Zheng ◽  
Enhong Chen

Mobility prediction plays an important role in a wide range of location-based applications and services. However, there are three problems in the existing literature: (1) explicit high-order interactions of spatio-temporal features are not systemically modeled; (2) most existing algorithms place attention mechanisms on top of recurrent network, so they can not allow for full parallelism and are inferior to self-attention for capturing long-range dependence; (3) most literature does not make good use of long-term historical information and do not effectively model the long-term periodicity of users. To this end, we propose MoveNet and RLMoveNet. MoveNet is a self-attention-based sequential model, predicting each user’s next destination based on her most recent visits and historical trajectory. MoveNet first introduces a cross-based learning framework for modeling feature interactions. With self-attention on both the most recent visits and historical trajectory, MoveNet can use an attention mechanism to capture the user’s long-term regularity in a more efficient way. Based on MoveNet, to model long-term periodicity more effectively, we add the reinforcement learning layer and named RLMoveNet. RLMoveNet regards the human mobility prediction as a reinforcement learning problem, using the reinforcement learning layer as the regularization part to drive the model to pay attention to the behavior with periodic actions, which can help us make the algorithm more effective. We evaluate both of them with three real-world mobility datasets. MoveNet outperforms the state-of-the-art mobility predictor by around 10% in terms of accuracy, and simultaneously achieves faster convergence and over 4x training speedup. Moreover, RLMoveNet achieves higher prediction accuracy than MoveNet, which proves that modeling periodicity explicitly from the perspective of reinforcement learning is more effective.


2020 ◽  
Vol 177 ◽  
pp. 107312
Author(s):  
Zhipeng Cheng ◽  
Ning Chen ◽  
Bang Liu ◽  
Zhibin Gao ◽  
Lianfen Huang ◽  
...  

2018 ◽  
Vol 278 ◽  
pp. 99-109 ◽  
Author(s):  
Yuanyuan Qiao ◽  
Zhongwei Si ◽  
Yanting Zhang ◽  
Fehmi Ben Abdesslem ◽  
Xinyu Zhang ◽  
...  

2021 ◽  
Author(s):  
Amir Dhami

Racism has caused untold societal problems throughout U.S. history, damaging reputations, job prospects, livelihoods, and the physical and mental well-being of millions. While economic reparations will not wholly resolve the problem, they will serve as an acknowledgment of the problem and the associated damages that have been caused as a result of the manifestation of racism in every arena of life. The degree to which racism is present in the United States has been an ongoing and repeated problem within the country since the 1600s. Racism leads to inequality in public resource allocation; inequality in public resource allocation goes against the founding principles of the nation and are still evident in today’s society. Current efforts to address systemic racism are most frequently viewed as points of contention, which disproportionately decreases the ability to effectively resolve the problem by fostering and creating an environment in which people are pitted against one another instead of working in conjunction to address the problem. One way that this divide can be addressed is through the provision of economic reparations made by the upper class. From an economic praxis, members of the upper class must pay reparations to African-American families due to their historic use of racism as a means of exacerbating wealth inequity.


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