合肥生活安徽新闻合肥交通合肥房产生活服务合肥教育合肥招聘合肥旅游文化艺术合肥美食合肥地图合肥社保合肥医院企业服务合肥法律

CS 6347代做、MATLAB程序设计代写

时间:2024-04-30  来源:合肥网hfw.cc  作者:hfw.cc 我要纠错



Problem Set 4
CS 6347
Due: 4/25/2024 by 11:59pm
Note: all answers should be accompanied by explanations for full credit. Late homeworks
cannot be accepted. All submitted code MUST compile/run.
Problem 1: Expectation Maximization for Colorings (40 pts)
For this problem, we will use the same factorization as we have in past assignments. As on the
previous assignment, the weights will now be considered parameters of the model that need to be
learned from samples.
Suppose that some of the vertices, L ⊆ V , are latent variables in the model. Given m samples
of the observed variables in V \ L, what is the log-likelihood as a function of the weights? Perform
MLE using the EM algorithm. Your solution should be written as a MATLAB function that takes
as input an n × n matrix A corresponding to the adjacency matrix of a graph G, an n-dimensional
binary vector L whose non-zero entries correspond to the latent variables, and samples which is an
n × m k-ary matrix where samplesi,t corresponds to observed color for vertex i in the t
th sample
(you should discard any inputs related to the latent variables). The output should be the vector of
weights w corresponding to the MLE parameters for each color from the EM algorithm. Note that
you should use belief propagation to approximate the counting problem in the E-step.
function w = colorem(A, L, samples)
Problem 2: EM for Bayesian Networks (60pts)
For this problem, you will use the house-votes-84.data data set provided with this problem set.
Each row of the provided data file corresponds to a single observation of a voting record for a
congressperson: the first entry is party affiliation and the remaining entries correspond to votes on
different legislation with question marks denoting missing data.
1. Using the first three features and the first 300 data observations only, fit a Bayesian network
to this data using the EM algorithm for each of the eight possible complete DAGs over three
variables.
2. Do different runs of the EM algorithm produce different models?
3. Evaluate your eight models, on the data that was not used for training, for the task of
predicting party affiliation given the values of the other two features. Is the prediction highly

请加QQ:99515681  邮箱:99515681@qq.com   WX:codinghelp













 

扫一扫在手机打开当前页
  • 上一篇:COMP1047代做、代写Java/Python程序语言
  • 下一篇:代写ECS 116、代做SQL设计编程
  • 无相关信息
    合肥生活资讯

    合肥图文信息
    新能源捕鱼一体电鱼竿好用吗
    新能源捕鱼一体电鱼竿好用吗
    海信罗马假日洗衣机亮相AWE  复古美学与现代科技完美结合
    海信罗马假日洗衣机亮相AWE 复古美学与现代
    合肥机场巴士4号线
    合肥机场巴士4号线
    合肥机场巴士3号线
    合肥机场巴士3号线
    合肥机场巴士2号线
    合肥机场巴士2号线
    合肥机场巴士1号线
    合肥机场巴士1号线
    合肥轨道交通线路图
    合肥轨道交通线路图
    合肥地铁5号线 运营时刻表
    合肥地铁5号线 运营时刻表
  • 币安app官网下载 短信验证码

    关于我们 | 打赏支持 | 广告服务 | 联系我们 | 网站地图 | 免责声明 | 帮助中心 | 友情链接 |

    Copyright © 2024 hfw.cc Inc. All Rights Reserved. 合肥网 版权所有
    ICP备06013414号-3 公安备 42010502001045