合肥生活安徽新聞合肥交通合肥房產生活服務合肥教育合肥招聘合肥旅游文化藝術合肥美食合肥地圖合肥社保合肥醫院企業服務合肥法律

        代寫CIS5200、代做Java/Python程序語言
        代寫CIS5200、代做Java/Python程序語言

        時間:2024-11-01  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯



        CIS5200: Machine Learning Fall 2024
        Homework 2
        Release Date: October 9, 2024 Due Date: October 18, 2024
        • HW2 will count for 10% of the grade. This grade will be split between the written (30 points)
        and programming (40 points) parts.
        • All written homework solutions are required to be formatted using LATEX. Please use the
        template here. Do not modify the template. This is a good resource to get yourself more
        familiar with LATEX, if you are still not comfortable.
        • You will submit your solution for the written part of HW2 as a single PDF file via Gradescope.
        The deadline is 11:59 PM ET. Contact TAs on Ed if you face any issues uploading your
        homeworks.
        • Collaboration is permitted and encouraged for this homework, though each student must
        understand, write, and hand in their own submission. In particular, it is acceptable for
        students to discuss problems with each other; it is not acceptable for students to look at
        another student’s written Solutions when writing their own. It is also not acceptable to
        publicly post your (partial) solution on Ed, but you are encouraged to ask public questions
        on Ed. If you choose to collaborate, you must indicate on each homework with whom you
        collaborated.
        Please refer to the notes and slides posted on the website if you need to recall the material discussed
        in the lectures.
        1 Written Questions (30 points)
        Problem 1: Gradient Descent (20 points)
        Consider a training dataset S = {(x1, y1), . . . ,(xm, ym)} where for all i ∈ [m], ∥xi∥2 ≤ 1 and
        yi ∈ {−1, 1}. Suppose we want to run regularized logistic regression, that is, solve the following
        optimization problem: for regularization term R(w),
        min
        w m
        1
        mX
        i=1
        log  1 + exp  −yiw
        ⊤xi
         + R(w)
        Recall: For showing that a twice differentiable function f is µ-strongly convex, it suffices to show
        that the hessian satisfies: ∇2f ⪰ µI. Similarly to show hat a twice differentiable function f is
        L-smooth, it suffices to show that the hessian satisfies: LI ⪰ ∇2f. Here I is the identity matrix of
        the appropriate dimension.
        1
        1.1 (3 points) In the case where R(w) = 0, we know that the objective is convex. Is it strongly
        convex? Explain your answer.
        1.2 (3 points) In the case where R(w) = 0, show that the objective is **smooth.
        1.3 (4 points) In the case of R(w) = 0, what is the largest learning rate that you can choose such
        that the objective is non-increasing at each iteration? Explain your answer.
        Hint: The answer is not 1/L for a L-smooth function.
        1.4 (1 point) What is the convergence rate of gradient descent on this problem with R(w) = 0?
        In other words, suppose I want to achieve F(wT +1) − F(w∗) ≤ ϵ, express the number of iterations
        T that I need to run GD for.
        Note: You do not need to reprove the convergence guarantee, just use the guarantee to provide the
        rate.
        1.5 (5 points) Consider the following variation of the ℓ2 norm regularizer called the weighted ℓ2
        norm regularizer: for λ1, . . . , λd ≥ 0,
        Show that the objective with R(w) as defined above is µ-strongly convex and L-smooth for µ =
        2 minj∈[d] λj and L = 1 + 2 maxj∈[d] λj .
        1.6 (4 points) If a function is µ-strongly convex and L-smooth, after T iterations of gradient
        descent we have:
        Using the above, what is the convergence rate of gradient descent on the regularized logistic re gression problem with the weighted ℓ2 norm penalty? In other words, suppose I want to achieve
        ∥wT +1 − w∗∥2 ≤ ϵ, express the number of iterations T that I need to run GD.
        Note: You do not need to prove the given convergence guarantee, just provide the rate.
        Problem 2: MLE for Linear Regression (10 points)
        In this question, you are going to derive an alternative justification for linear regression via the
        squared loss. In particular, we will show that linear regression via minimizing the squared loss is
        equivalent to maximum likelihood estimation (MLE) in the following statistical model.
        Assume that for given x, there exists a true linear function parameterized by w so that the label y
        is generated randomly as
        y = w
        ⊤x + ϵ
        2
        where ϵ ∼ N (0, σ2
        ) is some normally distributed noise with mean 0 and variance σ
        2 > 0. In other
        words, the labels of your data are equal to some true linear function, plus Gaussian noise around
        that line.
        2.1 (3 points) Show that the above model implies that the conditional density of y given x is
        P p(y|x) = 1.
        Hint: Use the density function of the normal distribution, or the fact that adding a constant to a
        Gaussian random variable shifts the mean by that constant.
        2.2 (2 points) Show that the risk of the predictor f(x) = E[y|x] is σ.
        2.3 (3 points) The likelihood for the given data {(x1, y1), . . . ,(xm, ym)} is given by.
        Lˆ(w, σ) = p(y1, . . . , ym|x1, . . . , xm) =
        Compute the log conditional likelihood, that is, log Lˆ(w, σ).
        Hint: Use your expression for p(y | x) from part 2.1.
        2.4 (2 points) Show that the maximizer of log Lˆ(w, σ) is the same as the minimizer of the empirical
        risk with squared loss, ˆR(w) = m
        Hint: Take the derivative of your result from 2.3 and set it equal to zero.
        2 Programming Questions (20 points)
        Use the link here to access the Google Colaboratory (Colab) file for this homework. Be sure to
        make a copy by going to “File”, and “Save a copy in Drive”. As with the previous homeworks, this
        assignment uses the PennGrader system for students to receive immediate feedback. As noted on
        the notebook, please be sure to change the student ID from the default ‘99999999’ to your 8-digit
        PennID.
        Instructions for how to submit the programming component of HW 2 to Gradescope are included
        in the Colab notebook. You may find this PyTorch linear algebra reference and this general
        PyTorch reference to be helpful in perusing the documentation and finding useful functions for
        your implementation.


        請加QQ:99515681  郵箱:99515681@qq.com   WX:codinghelp

        掃一掃在手機打開當前頁
      1. 上一篇:代寫MMME4056、代做MATLAB編程設計
      2. 下一篇:CSCI 201代做、代寫c/c++,Python編程
      3. 無相關信息
        合肥生活資訊

        合肥圖文信息
        急尋熱仿真分析?代做熱仿真服務+熱設計優化
        急尋熱仿真分析?代做熱仿真服務+熱設計優化
        出評 開團工具
        出評 開團工具
        挖掘機濾芯提升發動機性能
        挖掘機濾芯提升發動機性能
        海信羅馬假日洗衣機亮相AWE  復古美學與現代科技完美結合
        海信羅馬假日洗衣機亮相AWE 復古美學與現代
        合肥機場巴士4號線
        合肥機場巴士4號線
        合肥機場巴士3號線
        合肥機場巴士3號線
        合肥機場巴士2號線
        合肥機場巴士2號線
        合肥機場巴士1號線
        合肥機場巴士1號線
      4. 短信驗證碼 酒店vi設計 NBA直播 幣安下載

        關于我們 | 打賞支持 | 廣告服務 | 聯系我們 | 網站地圖 | 免責聲明 | 幫助中心 | 友情鏈接 |

        Copyright © 2025 hfw.cc Inc. All Rights Reserved. 合肥網 版權所有
        ICP備06013414號-3 公安備 42010502001045

        日韩深夜福利视频| 国产精品亚洲片在线花蝴蝶| 国产九九久久99精品影院| 久久国内精品自在自线400部o | 日韩久久久久久中文人妻 | 精品国产一区二区三区AV| 亚洲精品无码永久中文字幕 | 国产午夜精品一二区理论影院| 国产成人精品视频福利app| 99视频精品在线| 亚洲精品无码久久不卡| 精品无码久久久久久国产| 久久国产精品老人性| 人人妻久久人人澡人人爽人人精品| 国产精品igao视频| 国内精品久久久久影视| 久久精品国产亚洲AV大全| 国产精品 91 第一页| 国产日韩在线观看视频网站| 日韩乱码人妻无码中文字幕久久| 国产尤物在线视精品在亚洲| 日本一区二区三区精品视频| 老色鬼永久精品网站| 精品人妻码一区二区三区| 久久99精品久久久久久噜噜| 国产伦精品一区二区三区在线观看 | 国产精品乱码一区二区三| 热久久视久久精品18| 午夜精品在线观看| 日韩美女一级毛片| 久久精品国产亚洲av瑜伽| 2021久久精品免费观看| 久久精品国产影库免费看| 日韩aa在线观看| 日韩去日本高清在线| 日韩AV无码精品一二三区| 日韩经典精品无码一区| 国产真实乱子伦精品视频| 国产精品毛片无遮挡高清| 国产在线精品香蕉麻豆| 久久国产精品61947|