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A comparison of low-cost behavioral observation software applications and recommendations for use

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 نشر من قبل Annemarie van der Marel
 تاريخ النشر 2021
  مجال البحث الهندسة المعلوماتية
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In the field of animal behavior and behavioral ecology, many standardized methods to observe animal behavior were established approximately 50 years ago. While the protocols are similar, behavioral researchers can take advantage of technological advancements to enter observations directly onto a handheld computer (phone, tablet, etc.), saving precious time. However, we now have the choice between many different platforms for recording behavioral observations. Our challenge is choosing the most appropriate platform that fits a particular study question, research design, budget, and desired amount of preparatory time. Here, we review six low-cost software applications for handheld computers that are available for real-time entry of behavioral observations: Animal Behaviour Pro, Animal Observer, BORIS, CyberTracker, Prim8, and ZooMonitor. We discuss the preliminary decisions that have to be made about the study design, and we assess the six applications by providing the advantages and disadvantages of each platform, a user experience of the application setup and an overall application comparison. In our supplemental material we review the setup and data collection routines, and how to customize certain platforms so they will work more effectively for particular study aims or sampling methods. Our goal is to help researchers make calculated decisions about what behavioral observation platform is best for their study system and question.

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