TY - GEN
T1 - Spatially-dimension-adaptive sparse grids for online learning
AU - Khakhutskyy, Valeriy
AU - Hegland, Markus
N1 - Publisher Copyright:
© Springer International Publishing Switzerland 2016.
PY - 2016
Y1 - 2016
N2 - This paper takes a new look at regression with adaptive sparse grids. Considering sparse grid refinement as an optimisation problem, we show that it is in fact an instance of submodular optimisation with a cardinality constraint. Hence, we are able to directly apply results obtained in combinatorial optimisation research concerned with submodular optimisation to the grid refinement problem. Based on these results, we derive an efficient refinement indicator that allows the selection of new grid indices with finer granularity than was previously possible. We then implement the resulting new refinement procedure using an averaged stochastic gradient descent method commonly used in online learning methods. As a result we obtain a new method for training adaptive sparse grid models.We show both for synthetic and real-life data that the resulting models exhibit lower complexity and higher predictive power compared to currently used state-of-the-art methods.
AB - This paper takes a new look at regression with adaptive sparse grids. Considering sparse grid refinement as an optimisation problem, we show that it is in fact an instance of submodular optimisation with a cardinality constraint. Hence, we are able to directly apply results obtained in combinatorial optimisation research concerned with submodular optimisation to the grid refinement problem. Based on these results, we derive an efficient refinement indicator that allows the selection of new grid indices with finer granularity than was previously possible. We then implement the resulting new refinement procedure using an averaged stochastic gradient descent method commonly used in online learning methods. As a result we obtain a new method for training adaptive sparse grid models.We show both for synthetic and real-life data that the resulting models exhibit lower complexity and higher predictive power compared to currently used state-of-the-art methods.
UR - http://www.scopus.com/inward/record.url?scp=84962507487&partnerID=8YFLogxK
U2 - 10.1007/978-3-319-28262-6_6
DO - 10.1007/978-3-319-28262-6_6
M3 - Conference contribution
SN - 9783319282602
T3 - Lecture Notes in Computational Science and Engineering
SP - 133
EP - 162
BT - Sparse Grids and Applications, 2014
A2 - Pflüger, Dirk
A2 - Garcke, Jochen
PB - Springer Verlag
T2 - 3rd Workshop on Sparse Grids and Applications, SGA 2014
Y2 - 1 September 2014 through 5 September 2014
ER -