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  2. PDF - A first cost benefit analysis of action to reduce deforestation …

    https://www.jbs.cam.ac.uk/wp-content/uploads/2020/08/wp0813.pdf
    9 Jul 2023: References Baumert KA, Herzog T and Pershing J, 2005, Navigating the numbers: Greenhouse gas data and international climate policy, Washington, DC, World Resources Institute.
  3. � � � � � ����� ��� ���� ��� ...

    https://mlg.eng.cam.ac.uk/zoubin/papers/nlds_preprint.pdf
    27 Jan 2023: "# $% #&'() ,-$ '.$0/1,324 2. 5&6708:9<;>=@?BA@CED9GFIHJ?LKMONP6NJQR67S6KJ? TPUWVYX[Z]_X[acb!dfehgjiRkhlnmodqp:r@isktdRu'vWiwuyxwz{l|iwr}ziz@d>ehgji<u|dR itvlyqxhuzpr@diwxovu|dvWz{lyqpszlnr@Ez{@dxhro@r@isreoptgjp>d_zjdg{vpromhl|m@modRr:vzpszjdvEitpqr
  4. 13 Feb 2023: namely that if:. p. ([a. b. ])= N. ([µa. µb. ],. [Ka,a Ka,b. Kb,a Kb,b. ]), (1.17). then the means and covariances of marginals are simply the relevant subvectors ... and. submatrices of the joint mean and covariance respectively, i.e., p(a) = N(µa, Ka
  5. 1471-2105-10-242.fm

    https://mlg.eng.cam.ac.uk/pub/pdf/SavHelXuetal09.pdf
    13 Feb 2023: IEEE/ACM Transactions on Computa-tional Biology and Bioinformatics 2007 [http://doi.ieeecomputersociety.org/10.1109/TCBB.2007.70269]. 19. Heller KA, Ghahramani Z: Bayesian Hierarchical Clustering.Twenty-second International Conference
  6. MAT1 MATHEMATICAL TRIPOS Part IB Thursday, 08 June, 2023 ...

    https://www.maths.cam.ac.uk/undergrad/pastpapers/files/2023/paperib_3_2023.pdf
    7 Jul 2023: You may assume that thetransforms are well-defined.]. (c) Express the inverse transforms of cos ka and sin ka in terms of the δ-function,where a is a positive constant.
  7. PIPPS: Flexible Model-Based Policy Search Robust to the Curse of Chaos

    https://mlg.eng.cam.ac.uk/pub/pdf/ParRasPetDoy18.pdf
    13 Feb 2023: We use a squared exponential covari-ance function ka(x̃, x̃′) = s2a exp((x̃x̃′)T Λ1a (x̃x̃′)),where sa and Λ = diag([la1, la2,. ,
  8. 1 Robust Filtering and Smoothing with Gaussian Processes Marc ...

    https://mlg.eng.cam.ac.uk/pub/pdf/DeiTurHubetal12.pdf
    13 Feb 2023: With βxa =(Ka σ. 2wa I). 1ya and mfa (xt1) = kfa (X, xt1)>βxa, we obtain.
  9. Efficient Reinforcement Learning using Gaussian Processes

    https://mlg.eng.cam.ac.uk/pub/pdf/Dei10.pdf
    13 Feb 2023: Faculty of InformaticsInstitute for AnthropomaticsIntelligent Sensor-Actuator-Systems Laboratory (ISAS)Prof. Dr.-Ing. Uwe D. Hanebeck Sensor-Actuator-Systems. Intelligent. Efficient Reinforcement Learningusing Gaussian Processes. Marc Peter
  10. Statistical Models for Partial Membership Katherine A. Heller…

    https://mlg.eng.cam.ac.uk/zoubin/papers/HelWilGha08.pdf
    27 Jan 2023: W. A). Ken. nedy. (D. M. A). Aka. ka (. D.
  11. Perfusion Quantification Using Gaussian ProcessDeconvolution I.K.…

    https://mlg.eng.cam.ac.uk/pub/pdf/AndSzyRasetal02.pdf
    13 Feb 2023: J Magn Reson Imaging 2000;12:381–387. 7. Rempp KA, Brix G, Wenz F, Becker CR, Guckel F, Lorenz WJ.

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