TY - JOUR
T1 - Improved learning of k-parities
AU - Bhattacharyya, Arnab
AU - Gadekar, Ameet
AU - Rajgopal, Ninad
PY - 2020/11/6
Y1 - 2020/11/6
N2 - We consider the problem of learning k-parities in the online mistake-bound model: given a hidden vector x∈{0,1}n where the hamming weight of x is k and a sequence of “questions” a1,a2,…∈{0,1}n, where the algorithm must reply to each question with 〈ai,x〉(mod2), what is the best trade-off between the number of mistakes made by the algorithm and its time complexity? We improve the previous best result of Buhrman et al. [3] by an exp(k) factor in the time complexity. Next, we consider the problem of learning k-parities in the PAC model in the presence of random classification noise of rate [Formula Presented]. Here, we observe that even in the presence of classification noise of non-trivial rate, it is possible to learn k-parities in time better than (nk/2), whereas the current best algorithm for learning noisy k-parities, due to Grigorescu et al. [9], inherently requires time (nk/2) even when the noise rate is polynomially small.
AB - We consider the problem of learning k-parities in the online mistake-bound model: given a hidden vector x∈{0,1}n where the hamming weight of x is k and a sequence of “questions” a1,a2,…∈{0,1}n, where the algorithm must reply to each question with 〈ai,x〉(mod2), what is the best trade-off between the number of mistakes made by the algorithm and its time complexity? We improve the previous best result of Buhrman et al. [3] by an exp(k) factor in the time complexity. Next, we consider the problem of learning k-parities in the PAC model in the presence of random classification noise of rate [Formula Presented]. Here, we observe that even in the presence of classification noise of non-trivial rate, it is possible to learn k-parities in time better than (nk/2), whereas the current best algorithm for learning noisy k-parities, due to Grigorescu et al. [9], inherently requires time (nk/2) even when the noise rate is polynomially small.
KW - Learning k parities
KW - Learning sparse parities
KW - Learning sparse parities with noise
KW - Mistake bound model
KW - PAC model
UR - http://www.scopus.com/inward/record.url?scp=85090484229&partnerID=8YFLogxK
U2 - 10.1016/j.tcs.2020.08.025
DO - 10.1016/j.tcs.2020.08.025
M3 - Article
AN - SCOPUS:85090484229
SN - 0304-3975
VL - 840
SP - 249
EP - 256
JO - Theoretical Computer Science
JF - Theoretical Computer Science
ER -