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Foundations of Data Science

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2.10 Bibliographic Notes<br />

The word vector model was introduced by Salton [SWY75]. There is vast literature on<br />

the Gaussian distribution, its properties, drawing samples according to it, etc. The reader<br />

can choose the level and depth according to his/her background. The Master Tail Bounds<br />

theorem and the derivation <strong>of</strong> Chern<strong>of</strong>f and other inequalities from it are from [Kan09].<br />

The original pro<strong>of</strong> <strong>of</strong> the Random Projection Theorem by Johnson and Lindenstrauss was<br />

complicated. Several authors used Gaussians to simplify the pro<strong>of</strong>. The pro<strong>of</strong> here is due<br />

to Dasgupta and Gupta [DG99]. See [Vem04] for details and applications <strong>of</strong> the theorem.<br />

[MU05] and [MR95b] are text books covering a lot <strong>of</strong> the material touched upon here.<br />

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