Benefit of using GP prior for Deep Neural Networks












3












$begingroup$


I've been reading some papers on Bayesian Neural Networks and one that caught my attention is titled Deep Neural Networks as Gaussian Processes where they use Gaussian priors for the neural network weights and end up with a Gaussian Process, given that the hidden layer is wide enough.



By using the GP prior over functions produced by the network they are then able to perform Bayesian inference for regression tasks using deep neural networks.



My question is: What is the benefit gained from this? Why not simply use a vanilla GP? Also, is there some advantage of their method over using popular methods such as MCMC or variational inference to approximate the posterior distribution of the network weights?



My knowledge on Bayesian Neural Networks is still green, so any clarity on this topic would be greatly appreciated.










share|cite|improve this question









$endgroup$

















    3












    $begingroup$


    I've been reading some papers on Bayesian Neural Networks and one that caught my attention is titled Deep Neural Networks as Gaussian Processes where they use Gaussian priors for the neural network weights and end up with a Gaussian Process, given that the hidden layer is wide enough.



    By using the GP prior over functions produced by the network they are then able to perform Bayesian inference for regression tasks using deep neural networks.



    My question is: What is the benefit gained from this? Why not simply use a vanilla GP? Also, is there some advantage of their method over using popular methods such as MCMC or variational inference to approximate the posterior distribution of the network weights?



    My knowledge on Bayesian Neural Networks is still green, so any clarity on this topic would be greatly appreciated.










    share|cite|improve this question









    $endgroup$















      3












      3








      3





      $begingroup$


      I've been reading some papers on Bayesian Neural Networks and one that caught my attention is titled Deep Neural Networks as Gaussian Processes where they use Gaussian priors for the neural network weights and end up with a Gaussian Process, given that the hidden layer is wide enough.



      By using the GP prior over functions produced by the network they are then able to perform Bayesian inference for regression tasks using deep neural networks.



      My question is: What is the benefit gained from this? Why not simply use a vanilla GP? Also, is there some advantage of their method over using popular methods such as MCMC or variational inference to approximate the posterior distribution of the network weights?



      My knowledge on Bayesian Neural Networks is still green, so any clarity on this topic would be greatly appreciated.










      share|cite|improve this question









      $endgroup$




      I've been reading some papers on Bayesian Neural Networks and one that caught my attention is titled Deep Neural Networks as Gaussian Processes where they use Gaussian priors for the neural network weights and end up with a Gaussian Process, given that the hidden layer is wide enough.



      By using the GP prior over functions produced by the network they are then able to perform Bayesian inference for regression tasks using deep neural networks.



      My question is: What is the benefit gained from this? Why not simply use a vanilla GP? Also, is there some advantage of their method over using popular methods such as MCMC or variational inference to approximate the posterior distribution of the network weights?



      My knowledge on Bayesian Neural Networks is still green, so any clarity on this topic would be greatly appreciated.







      bayesian neural-networks






      share|cite|improve this question













      share|cite|improve this question











      share|cite|improve this question




      share|cite|improve this question










      asked Jun 1 '18 at 9:41









      C. SteynC. Steyn

      163




      163






















          1 Answer
          1






          active

          oldest

          votes


















          0












          $begingroup$

          I would suggest further reading of related papers on neural process:




          • https://arxiv.org/pdf/1807.01622.pdf


          • https://arxiv.org/pdf/1807.01613.pdf



          Neural Processes combine elements from both neural networks (NN) and gaussian process (GP)-like Bayesian models to capture distributions over functions. However, NN are more flexible in modelling data, removing the need of say pre-processing data to apply GP effectively. In fact with careful choices of architectures, one can achieve any desirable model behaviour, e.g. GP-like predictive uncertainties. Also, this is closely related to how unsupervised learning using VAEs became popular and recently GANs etc.



          In nutshell if you have huge amount of data (may be multi-modal), let the network do the thinking, else use GP if you have more domain knowledge.






          share|cite|improve this answer









          $endgroup$













            Your Answer





            StackExchange.ifUsing("editor", function () {
            return StackExchange.using("mathjaxEditing", function () {
            StackExchange.MarkdownEditor.creationCallbacks.add(function (editor, postfix) {
            StackExchange.mathjaxEditing.prepareWmdForMathJax(editor, postfix, [["$", "$"], ["\\(","\\)"]]);
            });
            });
            }, "mathjax-editing");

            StackExchange.ready(function() {
            var channelOptions = {
            tags: "".split(" "),
            id: "69"
            };
            initTagRenderer("".split(" "), "".split(" "), channelOptions);

            StackExchange.using("externalEditor", function() {
            // Have to fire editor after snippets, if snippets enabled
            if (StackExchange.settings.snippets.snippetsEnabled) {
            StackExchange.using("snippets", function() {
            createEditor();
            });
            }
            else {
            createEditor();
            }
            });

            function createEditor() {
            StackExchange.prepareEditor({
            heartbeatType: 'answer',
            autoActivateHeartbeat: false,
            convertImagesToLinks: true,
            noModals: true,
            showLowRepImageUploadWarning: true,
            reputationToPostImages: 10,
            bindNavPrevention: true,
            postfix: "",
            imageUploader: {
            brandingHtml: "Powered by u003ca class="icon-imgur-white" href="https://imgur.com/"u003eu003c/au003e",
            contentPolicyHtml: "User contributions licensed under u003ca href="https://creativecommons.org/licenses/by-sa/3.0/"u003ecc by-sa 3.0 with attribution requiredu003c/au003e u003ca href="https://stackoverflow.com/legal/content-policy"u003e(content policy)u003c/au003e",
            allowUrls: true
            },
            noCode: true, onDemand: true,
            discardSelector: ".discard-answer"
            ,immediatelyShowMarkdownHelp:true
            });


            }
            });














            draft saved

            draft discarded


















            StackExchange.ready(
            function () {
            StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fmath.stackexchange.com%2fquestions%2f2804143%2fbenefit-of-using-gp-prior-for-deep-neural-networks%23new-answer', 'question_page');
            }
            );

            Post as a guest















            Required, but never shown

























            1 Answer
            1






            active

            oldest

            votes








            1 Answer
            1






            active

            oldest

            votes









            active

            oldest

            votes






            active

            oldest

            votes









            0












            $begingroup$

            I would suggest further reading of related papers on neural process:




            • https://arxiv.org/pdf/1807.01622.pdf


            • https://arxiv.org/pdf/1807.01613.pdf



            Neural Processes combine elements from both neural networks (NN) and gaussian process (GP)-like Bayesian models to capture distributions over functions. However, NN are more flexible in modelling data, removing the need of say pre-processing data to apply GP effectively. In fact with careful choices of architectures, one can achieve any desirable model behaviour, e.g. GP-like predictive uncertainties. Also, this is closely related to how unsupervised learning using VAEs became popular and recently GANs etc.



            In nutshell if you have huge amount of data (may be multi-modal), let the network do the thinking, else use GP if you have more domain knowledge.






            share|cite|improve this answer









            $endgroup$


















              0












              $begingroup$

              I would suggest further reading of related papers on neural process:




              • https://arxiv.org/pdf/1807.01622.pdf


              • https://arxiv.org/pdf/1807.01613.pdf



              Neural Processes combine elements from both neural networks (NN) and gaussian process (GP)-like Bayesian models to capture distributions over functions. However, NN are more flexible in modelling data, removing the need of say pre-processing data to apply GP effectively. In fact with careful choices of architectures, one can achieve any desirable model behaviour, e.g. GP-like predictive uncertainties. Also, this is closely related to how unsupervised learning using VAEs became popular and recently GANs etc.



              In nutshell if you have huge amount of data (may be multi-modal), let the network do the thinking, else use GP if you have more domain knowledge.






              share|cite|improve this answer









              $endgroup$
















                0












                0








                0





                $begingroup$

                I would suggest further reading of related papers on neural process:




                • https://arxiv.org/pdf/1807.01622.pdf


                • https://arxiv.org/pdf/1807.01613.pdf



                Neural Processes combine elements from both neural networks (NN) and gaussian process (GP)-like Bayesian models to capture distributions over functions. However, NN are more flexible in modelling data, removing the need of say pre-processing data to apply GP effectively. In fact with careful choices of architectures, one can achieve any desirable model behaviour, e.g. GP-like predictive uncertainties. Also, this is closely related to how unsupervised learning using VAEs became popular and recently GANs etc.



                In nutshell if you have huge amount of data (may be multi-modal), let the network do the thinking, else use GP if you have more domain knowledge.






                share|cite|improve this answer









                $endgroup$



                I would suggest further reading of related papers on neural process:




                • https://arxiv.org/pdf/1807.01622.pdf


                • https://arxiv.org/pdf/1807.01613.pdf



                Neural Processes combine elements from both neural networks (NN) and gaussian process (GP)-like Bayesian models to capture distributions over functions. However, NN are more flexible in modelling data, removing the need of say pre-processing data to apply GP effectively. In fact with careful choices of architectures, one can achieve any desirable model behaviour, e.g. GP-like predictive uncertainties. Also, this is closely related to how unsupervised learning using VAEs became popular and recently GANs etc.



                In nutshell if you have huge amount of data (may be multi-modal), let the network do the thinking, else use GP if you have more domain knowledge.







                share|cite|improve this answer












                share|cite|improve this answer



                share|cite|improve this answer










                answered Dec 10 '18 at 12:51









                AstroAstro

                10510




                10510






























                    draft saved

                    draft discarded




















































                    Thanks for contributing an answer to Mathematics Stack Exchange!


                    • Please be sure to answer the question. Provide details and share your research!

                    But avoid



                    • Asking for help, clarification, or responding to other answers.

                    • Making statements based on opinion; back them up with references or personal experience.


                    Use MathJax to format equations. MathJax reference.


                    To learn more, see our tips on writing great answers.




                    draft saved


                    draft discarded














                    StackExchange.ready(
                    function () {
                    StackExchange.openid.initPostLogin('.new-post-login', 'https%3a%2f%2fmath.stackexchange.com%2fquestions%2f2804143%2fbenefit-of-using-gp-prior-for-deep-neural-networks%23new-answer', 'question_page');
                    }
                    );

                    Post as a guest















                    Required, but never shown





















































                    Required, but never shown














                    Required, but never shown












                    Required, but never shown







                    Required, but never shown

































                    Required, but never shown














                    Required, but never shown












                    Required, but never shown







                    Required, but never shown







                    Popular posts from this blog

                    Wiesbaden

                    Marschland

                    Dieringhausen