Wildlife Damage Estimation and Prediction Using Blog and Tweet Information

Abstract

 Wildlife damage estimation and prediction using blog and tweet information is conducted. Through a regressive analysis with the truth data about wildlife damage which is acquired by the federal and provincial governments and the blog and the tweet information about wildlife damage which are acquired in the same year, it is found that some possibility for estimation and prediction of wildlife damage. Through experiments, it is found that R2 value of the relations between the federal and provincial government gathered truth data of wildlife damages and the blog and the tweet information derived wildlife damages is more than 0.75. Also, it is possible to predict wildlife damage by using past truth data and the estimated wildlife damages. Therefore, it is concluded that the proposed method is applicable to estimate and predict wildlife damages.

Authors and Affiliations

Kohei Arai, Shohei Fujise

Keywords

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  • EP ID EP154126
  • DOI 10.14569/IJARAI.2016.050402
  • Views 122
  • Downloads 0

How To Cite

Kohei Arai, Shohei Fujise (2016).  Wildlife Damage Estimation and Prediction Using Blog and Tweet Information. International Journal of Advanced Research in Artificial Intelligence(IJARAI), 5(4), 9-14. https://europub.co.uk/articles/-A-154126