external drive
Spike Frequency Adaptation Implements Anticipative Tracking in Continuous Attractor Neural Networks
Yuanyuan Mi, C. C. Alan Fung, K. Y. Michael Wong, Si Wu
To extract motion information, the brain needs to compensate for time delays that are ubiquitous in neural signal transmission and processing. Here we propose a simple yet effective mechanism to implement anticipative tracking in neural systems. The proposed mechanism utilizes the property of spike-frequency adaptation (SFA), a feature widely observed in neuronal responses. We employ continuous attractor neural networks (CANNs) as the model to describe the tracking behaviors in neural systems. Incorporating SFA, a CANN exhibits intrinsic mobility, manifested by the ability of the CANN to support self-sustained travelling waves. In tracking a moving stimulus, the interplay between the external drive and the intrinsic mobility of the network determines the tracking performance. Interestingly, we find that the regime of anticipation effectively coincides with the regime where the intrinsic speed of the travelling wave exceeds that of the external drive. Depending on the SFA amplitudes, the network can achieve either perfect tracking, with zero-lag to the input, or perfect anticipative tracking, with a constant leading time to the input. Our model successfully reproduces experimentally observed anticipative tracking behaviors, and sheds light on our understanding of how the brain processes motion information in a timely manner.
- Asia > China > Beijing > Beijing (0.05)
- Asia > China > Hong Kong (0.05)
- North America > United States (0.04)
- Asia > China > Jiangsu Province (0.04)
Spike Frequency Adaptation Implements Anticipative Tracking in Continuous Attractor Neural Networks
Yuanyuan Mi, C. C. Alan Fung, K. Y. Michael Wong, Si Wu
To extract motion information, the brain needs to compensate for time delays that are ubiquitous in neural signal transmission and processing. Here we propose a simple yet effective mechanism to implement anticipative tracking in neural systems. The proposed mechanism utilizes the property of spike-frequency adaptation (SFA), a feature widely observed in neuronal responses. We employ continuous attractor neural networks (CANNs) as the model to describe the tracking behaviors in neural systems. Incorporating SFA, a CANN exhibits intrinsic mobility, manifested by the ability of the CANN to support self-sustained travelling waves. In tracking a moving stimulus, the interplay between the external drive and the intrinsic mobility of the network determines the tracking performance. Interestingly, we find that the regime of anticipation effectively coincides with the regime where the intrinsic speed of the travelling wave exceeds that of the external drive. Depending on the SFA amplitudes, the network can achieve either perfect tracking, with zero-lag to the input, or perfect anticipative tracking, with a constant leading time to the input. Our model successfully reproduces experimentally observed anticipative tracking behaviors, and sheds light on our understanding of how the brain processes motion information in a timely manner.
- Asia > China > Beijing > Beijing (0.05)
- Asia > China > Hong Kong (0.05)
- North America > United States (0.04)
24 work-from-home tech products that will supercharge your office
Making the switch from the office to working from home has become the new normal, but some users might feel like their setup is not as well-appointed or productive as at the office. It's time to change that. With the proper equipment and gear, you can turn your boring-old home setup into a workstation powerhouse -- ensuring you'll never need to return to the office again. At PCWorld, we've had to adjust to remote work just like the rest of the world. Our staff has spent countless hours testing and reviewing hardware, which means we've been lucky enough to find the best gear and accessories available. Below you'll find our favorite work-from-home essentials.
Forecasting the Forced van der Pol Equation with Frequent Phase Shifts Using Reservoir Computing
We tested the performance of reservoir computing (RC) in predicting the dynamics of a certain non-autonomous dynamical system. Specifically, we considered a van del Pol oscillator subjected to periodic external force with frequent phase shifts. The reservoir computer, which was trained and optimized with simulation data generated for a particular phase shift, was designed to predict the oscillation dynamics under periodic external forces with different phase shifts. The results suggest that if the training data have some complexity, it is possible to quantitatively predict the oscillation dynamics exposed to different phase shifts. The setting of this study was motivated by the problem of predicting the state of the circadian rhythm of shift workers and designing a better shift work schedule for each individual. Our results suggest that RC could be exploited for such applications.
- Asia > Japan > Honshū > Kantō > Tokyo Metropolis Prefecture > Tokyo (0.05)
- North America > United States > New York (0.04)
Spike Frequency Adaptation Implements Anticipative Tracking in Continuous Attractor Neural Networks
To extract motion information, the brain needs to compensate for time delays that are ubiquitous in neural signal transmission and processing. Here we propose a simple yet effective mechanism to implement anticipative tracking in neural systems. The proposed mechanism utilizes the property of spike-frequency adaptation (SFA), a feature widely observed in neuronal responses. We employ continuous attractor neural networks (CANNs) as the model to describe the tracking behaviors in neural systems. Incorporating SFA, a CANN exhibits intrinsic mobility, manifested by the ability of the CANN to support self-sustained travelling waves. In tracking a moving stimulus, the interplay between the external drive and the intrinsic mobility of the network determines the tracking performance. Interestingly, we find that the regime of anticipation effectively coincides with the regime where the intrinsic speed of the travelling wave exceeds that of the external drive. Depending on the SFA amplitudes, the network can achieve either perfect tracking, with zero-lag to the input, or perfect anticipative tracking, with a constant leading time to the input. Our model successfully reproduces experimentally observed anticipative tracking behaviors, and sheds light on our understanding of how the brain processes motion information in a timely manner.
- Asia > China > Beijing > Beijing (0.05)
- Asia > China > Hong Kong (0.05)
- North America > United States (0.04)
Microsoft Helps Apple Users Switch From Mac To Surface With This New Tool
Microsoft has an answer to consumers who are worried about having to tediously transfer files from a Mac device to a Surface tablet or laptop. The Redmond giant just introduced its Mac to Surface Assistant, which is basically a tool that facilitates the smooth migration of files from Apple computers to Microsoft's line of Surface devices. On Monday, Apple Insider learned of Microsoft's new migration tool which has the sole purpose of making it easy for users to transfer files, documents, photos, music and others stored on their Mac computers into any of the Surface devices. The tool is said to work so efficiently once the user has agreed to the end-user license agreement and provided the user has set the destination for the file before allowing its transfer to an external drive. Upon downloading the Mac to Surface Assistant, the tool will automatically walk the user through the process of how to transfer documents and media files to another device in the form of a zip file. Of course, Microsoft knows that not everyone stores files on the external drive.
Spike Frequency Adaptation Implements Anticipative Tracking in Continuous Attractor Neural Networks
Mi, Yuanyuan, Fung, C. C. Alan, Wong, K. Y. Michael, Wu, Si
To extract motion information, the brain needs to compensate for time delays that are ubiquitous in neural signal transmission and processing. Here we propose a simple yet effective mechanism to implement anticipative tracking in neural systems. The proposed mechanism utilizes the property of spike-frequency adaptation (SFA), a feature widely observed in neuronal responses. We employ continuous attractor neural networks (CANNs) as the model to describe the tracking behaviors in neural systems. Incorporating SFA, a CANN exhibits intrinsic mobility, manifested by the ability of the CANN to hold self-sustained travelling waves. In tracking a moving stimulus, the interplay between the external drive and the intrinsic mobility of the network determines the tracking performance. Interestingly, we find that the regime of anticipation effectively coincides with the regime where the intrinsic speed of the travelling wave exceeds that of the external drive. Depending on the SFA amplitudes, the network can achieve either perfect tracking, with zero-lag to the input, or perfect anticipative tracking, with a constant leading time to the input. Our model successfully reproduces experimentally observed anticipative tracking behaviors, and sheds light on our understanding of how the brain processes motion information in a timely manner.
- Asia > China > Beijing > Beijing (0.05)
- Asia > China > Hong Kong (0.05)
- North America > United States (0.04)
- Asia > China > Jiangsu Province (0.04)