6,132 research outputs found
The Recursive Form of Error Bounds for RFS State and Observation with Pd<1
In the target tracking and its engineering applications, recursive state
estimation of the target is of fundamental importance. This paper presents a
recursive performance bound for dynamic estimation and filtering problem, in
the framework of the finite set statistics for the first time. The number of
tracking algorithms with set-valued observations and state of targets is
increased sharply recently. Nevertheless, the bound for these algorithms has
not been fully discussed. Treating the measurement as set, this bound can be
applied when the probability of detection is less than unity. Moreover, the
state is treated as set, which is singleton or empty with certain probability
and accounts for the appearance and the disappearance of the targets. When the
existence of the target state is certain, our bound is as same as the most
accurate results of the bound with probability of detection is less than unity
in the framework of random vector statistics. When the uncertainty is taken
into account, both linear and non-linear applications are presented to confirm
the theory and reveal this bound is more general than previous bounds in the
framework of random vector statistics.In fact, the collection of such
measurements could be treated as a random finite set (RFS)
Entanglement-Embedded Recurrent Network Architecture: Tensorized Latent State Propagation and Chaos Forecasting
Chaotic time series forecasting has been far less understood despite its
tremendous potential in theory and real-world applications. Traditional
statistical/ML methods are inefficient to capture chaos in nonlinear dynamical
systems, especially when the time difference between consecutive
steps is so large that a trivial, ergodic local minimum would most likely be
reached instead. Here, we introduce a new long-short-term-memory (LSTM)-based
recurrent architecture by tensorizing the cell-state-to-state propagation
therein, keeping the long-term memory feature of LSTM while simultaneously
enhancing the learning of short-term nonlinear complexity. We stress that the
global minima of chaos can be most efficiently reached by tensorization where
all nonlinear terms, up to some polynomial order, are treated explicitly and
weighted equally. The efficiency and generality of our architecture are
systematically tested and confirmed by theoretical analysis and experimental
results. In our design, we have explicitly used two different many-body
entanglement structures---matrix product states (MPS) and the multiscale
entanglement renormalization ansatz (MERA)---as physics-inspired tensor
decomposition techniques, from which we find that MERA generally performs
better than MPS, hence conjecturing that the learnability of chaos is
determined not only by the number of free parameters but also the tensor
complexity---recognized as how entanglement entropy scales with varying
matricization of the tensor.Comment: 12 pages, 7 figure
- …