Toward Efficient Bayesian Approaches to Inference in Hierarchical Hidden Markov Models for Inferring Animal Behavior

被引:4
作者
Sacchi, Giada [1 ]
Ben Swallow [2 ]
机构
[1] Univ Edinburgh, Sch Math & Stat, Edinburgh, Midlothian, Scotland
[2] Univ Glasgow, Sch Math & Stat, Glasgow, Lanark, Scotland
来源
FRONTIERS IN ECOLOGY AND EVOLUTION | 2021年 / 9卷
关键词
parallel tempering; animal movement; hierarchical hidden Markov models; Bayesian inference; MCMC; STATIONARY; MOVEMENT;
D O I
10.3389/fevo.2021.623731
中图分类号
Q14 [生态学(生物生态学)];
学科分类号
071012 ; 0713 ;
摘要
The study of animal behavioral states inferred through hidden Markov models and similar state switching models has seen a significant increase in popularity in recent years. The ability to account for varying levels of behavioral scale has become possible through hierarchical hidden Markov models, but additional levels lead to higher complexity and increased correlation between model components. Maximum likelihood approaches to inference using the EM algorithm and direct optimization of likelihoods are more frequently used, with Bayesian approaches being less favored due to computational demands. Given these demands, it is vital that efficient estimation algorithms are developed when Bayesian methods are preferred. We study the use of various approaches to improve convergence times and mixing in Markov chain Monte Carlo methods applied to hierarchical hidden Markov models, including parallel tempering as an inference facilitation mechanism. The method shows promise for analysing complex stochastic models with high levels of correlation between components, but our results show that it requires careful tuning in order to maximize that potential.
引用
收藏
页数:12
相关论文
共 30 条
  • [1] Joint modelling of multi-scale animal movement data using hierarchical hidden Markov models
    Adam, Timo
    Griffiths, Christopher A.
    Leos-Barajas, Vianey
    Meese, Emily N.
    Lowe, Christopher G.
    Ackwell, Paul G. B.
    Righton, David
    Langrock, Roland
    [J]. METHODS IN ECOLOGY AND EVOLUTION, 2019, 10 (09): : 1536 - 1550
  • [2] A tutorial on adaptive MCMC
    Andrieu, Christophe
    Thoms, Johannes
    [J]. STATISTICS AND COMPUTING, 2008, 18 (04) : 343 - 373
  • [3] Approximate Bayesian Computation in Evolution and Ecology
    Beaumont, Mark A.
    [J]. ANNUAL REVIEW OF ECOLOGY, EVOLUTION, AND SYSTEMATICS, VOL 41, 2010, 41 : 379 - 406
  • [4] Brooks S, 2011, CH CRC HANDB MOD STA, pXIX
  • [5] UNDERSTANDING THE METROPOLIS-HASTINGS ALGORITHM
    CHIB, S
    GREENBERG, E
    [J]. AMERICAN STATISTICIAN, 1995, 49 (04) : 327 - 335
  • [6] The hierarchical hidden Markov model: Analysis and applications
    Fine, S
    Singer, Y
    Tishby, N
    [J]. MACHINE LEARNING, 1998, 32 (01) : 41 - 62
  • [7] Evaluation of Parallel Tempering to Accelerate Bayesian Parameter Estimation in Systems Biology
    Gupta, Sanjana
    Hainsworth, Liam
    Hogg, Justin S.
    Lee, Robin E. C.
    Faeder, James R.
    [J]. 2018 26TH EUROMICRO INTERNATIONAL CONFERENCE ON PARALLEL, DISTRIBUTED, AND NETWORK-BASED PROCESSING (PDP 2018), 2018, : 690 - 697
  • [8] Parallel tempering algorithm for conformational studies of biological molecules
    Hansmann, UHE
    [J]. CHEMICAL PHYSICS LETTERS, 1997, 281 (1-3) : 140 - 150
  • [9] Data Analysis Recipes: Using Markov Chain Monte Carlo
    Hogg, David W.
    Foreman-Mackey, Daniel
    [J]. ASTROPHYSICAL JOURNAL SUPPLEMENT SERIES, 2018, 236 (01)
  • [10] Hidden Markov Models: The Best Models for Forager Movements?
    Joo, Rocio
    Bertrand, Sophie
    Tam, Jorge
    Fablet, Ronan
    [J]. PLOS ONE, 2013, 8 (08):