DAI Ruoying, DANG Xuewei, FENG Zhao, et al. Randomforestbased street vendors distribution model: A case study of Haizhu District[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2018,57(1):76-82.
DAI Ruoying, DANG Xuewei, FENG Zhao, et al. Randomforestbased street vendors distribution model: A case study of Haizhu District[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2018,57(1):76-82.DOI:
Street vendors problem is a challenge to city management in China. Vendors on the street provide convenience for citizens on one hand
and to some extent disturb the daily order of cities on the other hand. Most studies on street vendors focus on the mechanics of vendors aggregation with certain management methodology
and focus on vendors of particular streets. A quantitative modeling on vendor distribution is rare. A number of factors with complex relationship to one another decide the aggregation of street vendors
therefore
the algorithm of random forest is suitable for its application to building classifiers with complex features. With this algorithm not relying on particular critical factor
problems occurred frequently in other algorithms
such as outliers
noises and overfitting
can be well avoided. Further analysis can be made since the algorithm provides magnitude for each street vendors concerned factors. According to literature and field investigation
average house price per square
length of street segments
folks number
bus line number are chosen for modeling. Haizhu district of Guangzhou has been investigated. Taking kappa coefficient and overall accuracy as standard
the optimum predict model of street vendors is generated with training and parameters adjustment
setting no vendor as grade 1
1~10 vendors as grade 2
11~20 vendors as grade 3
21 or more vendors as grade 4. The proposed model of street vendors distribution which predicts the appearance of street vendors