TY - JOUR
T1 - The forgetron
T2 - A kernel-based perceptron on a budget
AU - Dekel, Ofer
AU - Shai, Shalev Shwartz
AU - Singer, Yoram
PY - 2007
Y1 - 2007
N2 - The Perceptron algorithm, despite its simplicity, often performs well in online classification tasks. The Perceptron becomes especially effective when it is used in conjunction with kernel functions. However, a common difficulty encountered when implementing kernel-based online algorithms is the amount of memory required to store the online hypothesis, which may grow unboundedly as the algorithm progresses. Moreover, the running time of each online round grows linearly with the amount of memory used to store the hypothesis. In this paper, we present the Forgetron family of kernel-based online classification algorithms, which overcome this problem by restricting themselves to a predefined memory budget. We obtain different members of this family by modifying the kernel-based Perceptron in various ways. We also prove a unified mistake bound for all of the Forgetron algorithms. To our knowledge, this is the first online kernel-based learning paradigm which, on one hand, maintains a strict limit on the amount of memory it uses and, on the other hand, entertains a relative mistake bound. We conclude with experiments using real datasets, which underscore the merits of our approach.
AB - The Perceptron algorithm, despite its simplicity, often performs well in online classification tasks. The Perceptron becomes especially effective when it is used in conjunction with kernel functions. However, a common difficulty encountered when implementing kernel-based online algorithms is the amount of memory required to store the online hypothesis, which may grow unboundedly as the algorithm progresses. Moreover, the running time of each online round grows linearly with the amount of memory used to store the hypothesis. In this paper, we present the Forgetron family of kernel-based online classification algorithms, which overcome this problem by restricting themselves to a predefined memory budget. We obtain different members of this family by modifying the kernel-based Perceptron in various ways. We also prove a unified mistake bound for all of the Forgetron algorithms. To our knowledge, this is the first online kernel-based learning paradigm which, on one hand, maintains a strict limit on the amount of memory it uses and, on the other hand, entertains a relative mistake bound. We conclude with experiments using real datasets, which underscore the merits of our approach.
KW - Kernel methods
KW - Learning theory
KW - Online classification
KW - The Perceptron algorithm
UR - http://www.scopus.com/inward/record.url?scp=55249109544&partnerID=8YFLogxK
U2 - 10.1137/060666998
DO - 10.1137/060666998
M3 - ???researchoutput.researchoutputtypes.contributiontojournal.article???
AN - SCOPUS:55249109544
SN - 0097-5397
VL - 37
SP - 1342
EP - 1372
JO - SIAM Journal on Computing
JF - SIAM Journal on Computing
IS - 5
ER -