smoothing | R Documentation |
This function performs smoothing inference in a Gaussian mixture dynamic Bayesian network. For a sequence of T time slices, this task consists in estimating the state of the system at each time slice t (for 1 ≤ t ≤ T) given all the data (the evidence) collected up to T. Smoothing inference is performed by sequential importance resampling, which is a particle-based approximate method (Koller and Friedman, 2009).
smoothing( gmdbn, evid, nodes = names(gmdbn$b_1), col_seq = NULL, n_part = 1000, max_part_sim = 1e+06, min_ess = 1, verbose = FALSE )
gmdbn |
An object of class |
evid |
A data frame containing the evidence. Its columns must explicitly
be named after nodes of |
nodes |
A character vector containing the inferred nodes (by default all
the nodes of |
col_seq |
A character vector containing the column names of |
n_part |
A positive integer corresponding to the number of particles generated for each observation sequence. |
max_part_sim |
An integer greater than or equal to |
min_ess |
A numeric value in [0, 1] corresponding to the minimum ESS
(expressed as a proportion of |
verbose |
A logical value indicating whether subsets of |
A data frame (tibble) with a structure similar to evid
containing the estimated values of the inferred nodes and their observation
sequences (if col_seq
is not NULL
).
Koller, D. and Friedman, N. (2009). Probabilistic Graphical Models: Principles and Techniques. The MIT Press.
filtering
, inference
,
prediction
set.seed(0) data(gmdbn_air, data_air) evid <- data_air evid$NO2[sample.int(7680, 1536)] <- NA evid$O3[sample.int(7680, 1536)] <- NA evid$TEMP[sample.int(7680, 1536)] <- NA evid$WIND[sample.int(7680, 1536)] <- NA smooth <- smoothing(gmdbn_air, evid, col_seq = "DATE", verbose = TRUE)
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