Computational Insights Into the Social Life of Zebras and Other Animals

Subscribers:
349,000
Published on ● Video Link: https://www.youtube.com/watch?v=ChPWkRgDWEI



Duration: 1:11:40
42 views
1


Computation has fundamentally changed the way we study nature. Recent breakthroughs in data collection technology, such as GPS and other mobile sensors, are giving biologists access to data about wild populations that are orders of magnitude richer than any previously collected. Such data offer the promise of answering some of the big ecological questions about animal populations. Unfortunately, in this domain, our ability to analyze data lags substantially behind our ability to collect it. In particular, interactions among individuals are often modeled as social networks where nodes represent individuals and an edge exists if the corresponding individuals have interacted during the observation period. The model is essentially static in that the interactions are aggregated over time and all information about the time and ordering of social interactions is discarded. We show that such traditional social network analysis methods may result in incorrect conclusions on dynamic data about the structure of interactions and the processes that spread over those interactions. We have extended computational methods for social network analysis to explicitly address the dynamic nature of interactions among individuals and developed techniques for identifying persistent communities, influential individuals, and extracting patterns of interactions in dynamic social networks. We will present our approach and demonstrate its applicability by analyzing interactions among zebra populations. http://www.sciencenews.org/articles/20071201/mathtrek.asp




Other Videos By Microsoft Research


2016-09-06Attribute-Based Security and Messaging
2016-09-06Statistical Spoken Language Generation of Stylistic Variation
2016-09-06The Quest for the Minimal Hardness Assumptions
2016-09-06Delimited and Composable Continuations in PLT Scheme
2016-09-06Critical Data Protection for Reliability and Security
2016-09-06Multi-view approaches for camera calibration and image-based modeling
2016-09-06Securing the Web With Decentralized Information Flow Control
2016-09-06Reconstruction and visualization of large photo collections
2016-09-06Media Computation: Introducing Computing Contextualized in Video and Audio Processing
2016-09-06MOSAIC: Unified Platform for Dynamic Overlay Selection and Composition
2016-09-06Computational Insights Into the Social Life of Zebras and Other Animals
2016-09-06Debugging Reinvented: Asking and Answering Why and Why Not Questions about Program Behavior [1/17]
2016-09-06CitySense: A Vision for an Urban-Scale Wireless Sensor Testbed
2016-09-06Why task-structure matters: The effects of task and social forces on software development
2016-09-06Robust Face Recognition via Sparse Representation
2016-09-06How to make Discretionary Access Control Resistant to Trojan Horses
2016-09-06Modeling Intention in Email: Speech Acts, Information Leaks and User Ranking Methods [1/2]
2016-09-06Techniques and Tools for Engineering Secure Web Applications
2016-09-06Should Machines Emulate Human Speech Recognition?
2016-09-06PLOW: A Collaborative Task Learning Agent
2016-09-06Building Bodies of Knowledge about Software Development Practices



Tags:
microsoft research