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KCI 후보
머신러닝을 활용한 모돈의 생산성 예측모델
Forecasting Sow`s Productivity using the Machine Learning Models
이민수 ( Min Soo Lee ) , 최영찬 ( Young Chan Choe )
UCI I410-ECN-0102-2012-520-000849345
* 발행 기관의 요청으로 이용이 불가한 자료입니다.

The Machine Learning has been identified as a promising approach to knowledge-based system development. This study aims to examine the ability of machine learning techniques for farmer`s decision making and to develop the reference model for using pig farm data. We compared five machine learning techniques: logistic regression, decision tree, artificial neural network, k-nearest neighbor, and ensemble. All models are well performed to predict the sow`s productivity in all parity, showing over 87.6% predictability. The model predictability of total litter size are highest at 91.3% in third parity and decreasing as parity increases. The ensemble is well performed to predict the sow`s productivity. The neural network and logistic regression is excellent classifier for all parity. The decision tree and the k-nearest neighbor was not good classifier for all parity. Performance of models varies over models used, showing up to 104% difference in lift values. Artificial Neural network and ensemble models have resulted in highest lift values implying best performance among models.

[자료제공 : 네이버학술정보]
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