13,322 research outputs found
DOC: Deep Open Classification of Text Documents
Traditional supervised learning makes the closed-world assumption that the
classes appeared in the test data must have appeared in training. This also
applies to text learning or text classification. As learning is used
increasingly in dynamic open environments where some new/test documents may not
belong to any of the training classes, identifying these novel documents during
classification presents an important problem. This problem is called open-world
classification or open classification. This paper proposes a novel deep
learning based approach. It outperforms existing state-of-the-art techniques
dramatically.Comment: accepted at EMNLP 201
Many-body ground state localization and coexistence of localized and extended states in an interacting quasiperiodic system
We study the localization problem of one-dimensional interacting spinless
fermions in an incommensurate optical lattice, which changes from an extended
phase to a nonergoic many-body localized phase by increasing the strength of
the incommensurate potential. We identify that there exists an intermediate
regime before the system enters the many-body localized phase, in which both
the localized and extended many-body states coexist, thus the system is divided
into three different phases, which can be characterized by normalized
participation ratios of the many-body eigenstates and distributions of natural
orbitals of the corresponding one-particle density matrix. This is very
different from its noninterating limit, in which all eigenstaes undergo a
delocaliztion-localization transtion when the strength of the incommensurate
potential exceeds a critical value.Comment: 5 pages, 6 figure
Lifelong Learning CRF for Supervised Aspect Extraction
This paper makes a focused contribution to supervised aspect extraction. It
shows that if the system has performed aspect extraction from many past domains
and retained their results as knowledge, Conditional Random Fields (CRF) can
leverage this knowledge in a lifelong learning manner to extract in a new
domain markedly better than the traditional CRF without using this prior
knowledge. The key innovation is that even after CRF training, the model can
still improve its extraction with experiences in its applications.Comment: Accepted at ACL 2017. arXiv admin note: text overlap with
arXiv:1612.0794
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