Prediction of Beef Production Using Linear Regression, Random Forest and k-Nearest Neighbors Algorithms

被引:0
|
作者
Yildiz, Berkant Ismail [1 ]
Karabag, Kemal [1 ]
机构
[1] Akdeniz Univ, Fac Agr, Dept Agr Biotechnol, TR-07058 Antalya, Turkiye
关键词
Beef production; Beef; Production prediction; Machine learning; Artificial intelligence; FEED; FOOD;
D O I
10.18016/ksutarimdoga.vi.1548951
中图分类号
S [农业科学];
学科分类号
09 ;
摘要
The rapid increase in the global population and evolving dietary habits have significantly heightened the demand for high-quality protein sources. Beef, as a vital protein source, plays a crucial role in meeting this growing demand. This study aims to develop and evaluate a machine-learning model to predict beef production using meteorological, agricultural, and economic data. To achieve this, three different machine learning algorithms-Linear Regression, Random Forest, and k-Nearest Neighbors-were employed. The results indicate that the Random Forest algorithm outperformed the other methods in terms of R2 and error metrics, demonstrating superior predictive accuracy. The study highlights the potential of machine learning techniques in predicting beef production, offering valuable insights for stakeholders involved in strategic decision-making to meet nutritional needs. As the global demand for protein continues to rise, the importance of such predictive models becomes increasingly significant, emphasizing the distinct advantages that machine learning approaches provide in this context.
引用
收藏
页码:247 / 255
页数:9
相关论文
共 50 条
  • [31] The Accuracy of the k-Nearest Neighbors and k-Means Algorithms in Gesture Identification
    Guzavineez, Tibor
    Szucs, Judit
    Szucs, Veronika
    Demeter, Robert
    Katona, Jozsef
    Kovari, Attila
    INFOCOMMUNICATIONS JOURNAL, 2024, : 30 - 36
  • [32] Stratified estimates of forest area using the k-nearest neighbors technique and satellite imagery
    McRoberts, RE
    Nelson, MD
    Wendt, DG
    PROCEEDINGS OF THE THIRD ANNUAL FOREST INVENTORY AND ANALYSIS SYMPOSIUM, 2002, 230 : 80 - 86
  • [33] Graph Clustering Using Mutual K-Nearest Neighbors
    Sardana, Divya
    Bhatnagar, Raj
    ACTIVE MEDIA TECHNOLOGY, AMT 2014, 2014, 8610 : 35 - 48
  • [34] Brief Announcement: Efficient Distributed Algorithms for the K-Nearest Neighbors Problem
    Fathi, Reza
    Molla, Anisur Rahaman
    Pandurangan, Gopal
    PROCEEDINGS OF THE 32ND ACM SYMPOSIUM ON PARALLELISM IN ALGORITHMS AND ARCHITECTURES (SPAA '20), 2020, : 527 - 529
  • [35] Time series labeling algorithms based on the K-nearest neighbors' frequencies
    Nasibov, Efendi N.
    Peker, Sinem
    EXPERT SYSTEMS WITH APPLICATIONS, 2011, 38 (05) : 5028 - 5035
  • [36] Ultrahigh frequency path loss prediction based on K-nearest neighbors
    Tikaria, Mamta
    Nigam, Vineeta Saxena
    INTERNATIONAL JOURNAL OF MICROWAVE AND WIRELESS TECHNOLOGIES, 2024,
  • [37] Mutual information and k-nearest neighbors approximator for time series prediction
    Sorjamaa, A
    Hao, J
    Lendasse, A
    ARTIFICIAL NEURAL NETWORKS: FORMAL MODELS AND THEIR APPLICATIONS - ICANN 2005, PT 2, PROCEEDINGS, 2005, 3697 : 553 - 558
  • [38] K-Nearest Neighbors Gaussian Process Regression for Urban Radio Map Reconstruction
    Zhang, Yifang
    Wang, Shaowei
    IEEE COMMUNICATIONS LETTERS, 2022, 26 (12) : 3049 - 3053
  • [39] Large-scale distance metric learning for k-nearest neighbors regression
    Nguyen, Bac
    Morell, Carlos
    De Baets, Bernard
    NEUROCOMPUTING, 2016, 214 : 805 - 814
  • [40] Cost-sensitive payment card fraud detection based on dynamic random forest and k-nearest neighbors
    Nami, Sanaz
    Shajari, Mehdi
    EXPERT SYSTEMS WITH APPLICATIONS, 2018, 110 : 381 - 392