We present distributed regression, an efficient and general framework for in-network modeling of sensor data. In this framework, the nodes of the sensor network collaborate to optimally fit a global function to each of their local measurements. The algorithm is based upon kernel linear regression, where the model takes the form of a weighted sum of local basis functions; this provides an expressive yet tractable class of models for sensor network data. Rather than transmitting data to one another or outside the network, nodes communicate constraints on the model parameters, drastically reducing the communication required. After the algorithm is run, each node can answer queries for its local region, or the nodes can efficiently transmit the...
Wireless communication technologies are used to collect information from sensitive, hostile and ina...
Many inference problems that arise in sensor networks can be formulated as a search for a global exp...
Wireless sensor networks provide a challenging application area for signal processing. Sensor networ...
Abstract—Over the past few years, wireless sensor networks received tremendous attention for monitor...
We propose a scheme for rate-constrained distributed nonparametric regression using a wireless senso...
International audienceWireless sensor networks are designed to perform on inference the environment ...
With an increased utilization of large sensor networks in applications such as environmental monitor...
Wireless sensor networks (WSNs) consist of interconnected microsensors, each of which collects measu...
Unlike conventional sensor networks, wireless sensors are limited in power, have much smaller memory...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
This paper offers a local distributed algorithm for multivari-ate regression in large peer-to-peer e...
In wireless sensor networks, centralized learning methods have very high communication costs and ene...
Distributed signal processing algorithms have become a key approach for statistical inference in wir...
Estimating statistical models within sensor networks requires distributed algorithms, in which both ...
Many inference problems that arise in sensor networks can be formulated as a search for a global exp...
Wireless communication technologies are used to collect information from sensitive, hostile and ina...
Many inference problems that arise in sensor networks can be formulated as a search for a global exp...
Wireless sensor networks provide a challenging application area for signal processing. Sensor networ...
Abstract—Over the past few years, wireless sensor networks received tremendous attention for monitor...
We propose a scheme for rate-constrained distributed nonparametric regression using a wireless senso...
International audienceWireless sensor networks are designed to perform on inference the environment ...
With an increased utilization of large sensor networks in applications such as environmental monitor...
Wireless sensor networks (WSNs) consist of interconnected microsensors, each of which collects measu...
Unlike conventional sensor networks, wireless sensors are limited in power, have much smaller memory...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
This paper offers a local distributed algorithm for multivari-ate regression in large peer-to-peer e...
In wireless sensor networks, centralized learning methods have very high communication costs and ene...
Distributed signal processing algorithms have become a key approach for statistical inference in wir...
Estimating statistical models within sensor networks requires distributed algorithms, in which both ...
Many inference problems that arise in sensor networks can be formulated as a search for a global exp...
Wireless communication technologies are used to collect information from sensitive, hostile and ina...
Many inference problems that arise in sensor networks can be formulated as a search for a global exp...
Wireless sensor networks provide a challenging application area for signal processing. Sensor networ...