Keyhole state space construction with applications to user modeling
Most models that explain observations in time depend on a structured state space as a basis for their modeling. We present methods to derive such a state space and its dynamics automatically from the observations, without any knowledge of their meaning or source. First, we build an explicit state...
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ndltd-UBC-oai-circle.library.ubc.ca-2429-106232018-01-05T17:35:24Z Keyhole state space construction with applications to user modeling Gorniak, Peter John Most models that explain observations in time depend on a structured state space as a basis for their modeling. We present methods to derive such a state space and its dynamics automatically from the observations, without any knowledge of their meaning or source. First, we build an explicit state space from an observation history in an off-line fashion (OFESI) by starting with the space induced by the observations and splitting a state when new substates significantly improve the information content of the state's action distribution. We form these new substates by grouping fixed length histories leading up to the state. We apply our algorithm to the user modeling case and show that we can automatically build a meaningful stochastic dynamic model of application use. Second, we discuss prediction of the next observation and show that an approach based on on-line implicit state identification (ONISI) from observed history outperforms other prediction methods. Again, we are interested in user modeling, where we can predict future user actions better than another current algorithm. Both algorithms work without knowledge or modification of the application in use. Third, we apply our explicit state identification algorithm to the problem of state identification for Hidden Markov Models (SIHMM). Taking into account both observation and transition probabilities we learn structures for Hidden Markov Models in a few iterations. Science, Faculty of Computer Science, Department of Graduate 2009-07-10T19:36:55Z 2009-07-10T19:36:55Z 2000 2000-11 Text Thesis/Dissertation http://hdl.handle.net/2429/10623 eng For non-commercial purposes only, such as research, private study and education. Additional conditions apply, see Terms of Use https://open.library.ubc.ca/terms_of_use. 2726094 bytes application/pdf |
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English |
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Others
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Most models that explain observations in time depend on a structured state space
as a basis for their modeling. We present methods to derive such a state space
and its dynamics automatically from the observations, without any knowledge of
their meaning or source. First, we build an explicit state space from an observation
history in an off-line fashion (OFESI) by starting with the space induced by
the observations and splitting a state when new substates significantly improve the
information content of the state's action distribution. We form these new substates
by grouping fixed length histories leading up to the state. We apply our algorithm
to the user modeling case and show that we can automatically build a meaningful
stochastic dynamic model of application use. Second, we discuss prediction of
the next observation and show that an approach based on on-line implicit state
identification (ONISI) from observed history outperforms other prediction methods.
Again, we are interested in user modeling, where we can predict future user actions
better than another current algorithm. Both algorithms work without knowledge
or modification of the application in use. Third, we apply our explicit state identification
algorithm to the problem of state identification for Hidden Markov Models
(SIHMM). Taking into account both observation and transition probabilities we
learn structures for Hidden Markov Models in a few iterations. === Science, Faculty of === Computer Science, Department of === Graduate |
author |
Gorniak, Peter John |
spellingShingle |
Gorniak, Peter John Keyhole state space construction with applications to user modeling |
author_facet |
Gorniak, Peter John |
author_sort |
Gorniak, Peter John |
title |
Keyhole state space construction with applications to user modeling |
title_short |
Keyhole state space construction with applications to user modeling |
title_full |
Keyhole state space construction with applications to user modeling |
title_fullStr |
Keyhole state space construction with applications to user modeling |
title_full_unstemmed |
Keyhole state space construction with applications to user modeling |
title_sort |
keyhole state space construction with applications to user modeling |
publishDate |
2009 |
url |
http://hdl.handle.net/2429/10623 |
work_keys_str_mv |
AT gorniakpeterjohn keyholestatespaceconstructionwithapplicationstousermodeling |
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1718588609227915264 |