Sciweavers

NIPS   2000
Wall of Fame | Most Viewed NIPS-2000 Paper
NIPS
2000
14 years 23 days ago
On Reversing Jensen's Inequality
Jensen's inequality is a powerful mathematical tool and one of the workhorses in statistical learning. Its applications therein include the EM algorithm, Bayesian estimation ...
Tony Jebara, Alex Pentland
Disclaimer and Copyright Notice
Sciweavers respects the rights of all copyright holders and in this regard, authors are only allowed to share a link to their preprint paper on their own website. Every contribution is associated with a desciptive image. It is the sole responsibility of the authors to ensure that their posted image is not copyright infringing. This service is compliant with IEEE copyright.
IdReadViewsTitleStatus
1Download preprint from source287
2Download preprint from source241
3Download preprint from source210
4Download preprint from source209
5Download preprint from source207
6Download preprint from source203
7Download preprint from source202
8Download preprint from source198
9Download preprint from source196
10Download preprint from source170
11Download preprint from source168
12Download preprint from source162
13Download preprint from source161
14Download preprint from source161
15Download preprint from source158
16Download preprint from source156
17Download preprint from source155
18Download preprint from source152
19Download preprint from source151
20Download preprint from source150
21Download preprint from source149
22Download preprint from source148
23Download preprint from source147
24Download preprint from source145
25Download preprint from source145
26Download preprint from source141
27Download preprint from source139
28Download preprint from source139
29Download preprint from source138
30Download preprint from source138
31Download preprint from source136
32Download preprint from source134
33Download preprint from source132
34Download preprint from source132
35Download preprint from source131
36Download preprint from source129
37Download preprint from source129
38Download preprint from source128
39Download preprint from source128
40Download preprint from source127
41Download preprint from source127
42Download preprint from source126
43Download preprint from source125
44Download preprint from source122
45Download preprint from source122
46Download preprint from source121
47Download preprint from source119
48Download preprint from source119
49Download preprint from source118
50Download preprint from source117
51Download preprint from source117
52Download preprint from source115
53Download preprint from source114
54Download preprint from source113
55Download preprint from source113
56Download preprint from source112
57Download preprint from source112
58Download preprint from source111
59Download preprint from source111
60Download preprint from source110
61Download preprint from source109
62Download preprint from source106
63Download preprint from source105
64Download preprint from source105
65Download preprint from source104
66Download preprint from source104
67Download preprint from source103
68Download preprint from source103
69Download preprint from source103
70Download preprint from source100
71Download preprint from source100
72Download preprint from source100
73Download preprint from source98
74Download preprint from source98
75Download preprint from source97
76Download preprint from source96
77Download preprint from source94
78Download preprint from source94
79Download preprint from source91
80Download preprint from source91
81Download preprint from source87
82Download preprint from source86
83Download preprint from source84
84Download preprint from source83
85Download preprint from source81
86Download preprint from source78