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      COMP9312代做、Java/c++編程設計代寫

      時間:2024-07-30  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯



      The University of New South Wales - COMP9312 - 24T2 - Data
      Analytics for Graphs
      Assignment 2
      Distributed Graph Processing, Feature Engineering,
      and Graph Neural Networks
      Important updates:
      Update @ 25 Jul 2024
      Fix the error or the weight matrix W and make the GAT layer
      formulation clearer in Q2.1.
      Summary
      Submission Submit an electronic copy of all answers on Moodle
      (Only the last submission will be used).
      Required
      Files
      A .pdf file is accepted. The file name should be
      ass2_zid.pdf
      Deadline 9 pm Friday 2 August (Sydney Time)
      Marks 20 marks (10% toward your total marks for this
      course)
      Late penalty. 5% of max assessment marks will be deducted for each
      additional day (24 hours) after the specified submission time and date.
      No submission is accepted 5 days (120 hours) after the deadline.
      START OF QUESTIONS
      Q1 (3 marks)
      2024/7/25 11:34 COMP9312 24T2 Assignment 2
      https://cgi.cse.unsw.edu.au/~cs9312/24T2/assignment/ass2/ 1/5
      Figure 1
      Figure 2 Figure 3
      1.1 Are the graphs in Figure 1 and Figure 2 homomorphic? If so,
      demonstrate a matching instance. (1 mark)
      1.2 Present all unique subgraphs in Figure 1 that are isomorphic to the
      graph in Figure 3. For example, { }, {
      }, and { } are all considered as
      the same subgraph 123. (2 marks)
      Marking for Q1.1: 1 mark is given for the correct answer. 0 mark is
      given for all other cases.
      Marking for Q1.2: 2 marks are given if the result subgraphs are
      correct, complete, and not redundant. Extra subgraphs and missing
      subgraphs will result in a loss of marks.
      Q2 (5 marks)
      2.1 Given an undirected graph as shown in Figure 4,
      Figure 4
      we aim to compute the output of the first graph convolutional layer
      with self-loops using the Graph Attention Network (GAT) model. The
      goal is to transform the initial node embeddings from a dimension of 4
      to a dimension of 5 through this layer. The equation can be written as:
      v1 : 1, v2 : 2, v3 : 3
      v1 : 2, v2 : 1, v3 : 3 v1 : 3, v2 : 1, v3 : 2
      H 1
      2024/7/25 11:34 COMP9312 24T2 Assignment 2
      https://cgi.cse.unsw.edu.au/~cs9312/24T2/assignment/ass2/ 2/5
      where indicates the -dimensional embedding of node in layer ,
      and . is the
      weighting factor of node 's message to node .
      denotes the weight matrix for the neighbours of in layer , denotes
      the dimension of the node embedding in layer . denotes the
      non-linear function. The initial embedding for all nodes is
      stacked in . is the weight matrices. Self-loops are included in
      the calculation to ensure that the node's information is retained.
      Therefore, the term is added to its set of neighbors, which can be
      expressed as . Round the values to 2 decimal places (for
      example, 3.333 will be rounded to 3.33 and 3.7571 will be rounded to
      3.76). (3 marks)
      2.2 Please determine whether the following statements are TRUE or
      FALSE. (2 marks)
      a. Skip-connections is a good technique used to alleviate over-
      smoothing.
      b. To design a model for predicting dropout on a course website, we
      represent it as a bipartite graph where nodes indicate students or
      courses. The task here is considered as node classification.
      c. Graph Attention Network (GAT) has less expressive power
      compared to GCN, as it computes the attention score between
      each pair of neighbors, which introduces extra computational
      complexity.
      d. The main difference between GraphSAGE and GCN is that
      GraphSAGE needs an activation function to add nonlinearity.
      Marking for Q2.1: 3 marks are given for the correct result. Incorrect
      values will result in a deduction of marks. Providing a detailed and
      correct description of the calculation will earn marks for a valid
      attempt, even if there are major mistakes in the result.
      Marking for Q2.2: 0.5 mark is given for each correct TRUE/FALSE
      answer.
      Q3 (8 marks)
      h(l)v =      
      u  N(v)  {v}
        vuW (l)h
      (l?1)
      hlv dl v l
      H l = [hlv1, h
      l
      v2, h
      l
      v3, h
      l
      v4, h
      l
      v5, h
      l
      v6]
      T avu = 1|N(v)  {v}|
      u v W (l)    Rdl?dl?1
      v l dl
      l   (?)
      ReLU
      H 0 W 1
      v
      {v}    N(v)
      H 0 =
      2024/7/25 11:34 COMP9312 24T2 Assignment 2
      https://cgi.cse.unsw.edu.au/~cs9312/24T2/assignment/ass2/ 3/5
      Figure 5
      Suppose we aim to count the number of shortest paths from a source
      vertex to all other vertices in an undirected unweighted graph shown
      using Pregel.
      3.1 Write the pseudocode for the compute implementation in Pregel. (3
      marks)
      3.2 Assume we run your algorithm with the source node 1 for the graph
      in Figure 5 on three workers. Vertices 1 and 5 are in worker X. Vertices
      2 and 4 are in worker Y. Vertices 3, 6 and 7 are in worker Z. Please
      indicate the set of active vertices and how many messages are sent in
      each iteration. (3 marks)
      3.3 Can the combiner optimization be used in this case? If yes, write
      the pseudocode for a combiner implementation. Calculate how many
      messages are sent in each iteration if the combiner is used in 3.2. If no,
      briefly discuss why a combiner cannot be used. (2 marks)
      Marking for Q3.1: 3 marks are given for the correct answer. 0 mark is
      given for all other cases.
      Marking for Q3.2: 2 marks are given for the correct answer. 0 mark is
      given for all other cases.
      Marking for Q3.3: 3 marks are given for the correct answer. 0 mark is
      given for all other cases.
      Q4 (4 marks)
      Consider the graph in Figure 6,
      2024/7/25 11:34 COMP9312 24T2 Assignment 2
      https://cgi.cse.unsw.edu.au/~cs9312/24T2/assignment/ass2/ 4/5
      Figure 6
      Figure 7
      4.1 Compute the betweenness centrality and closeness centrality of
      nodes C and H in Figure 6. Round the values to 2 decimal places (for
      example, 3.333 will be rounded to 3.33 and 3.7571 will be rounded to
      3.76). (2 marks)
      4.2 Given the graphlets in Figure 7, derive the graphlet degree vector
      (GDV) for nodes A and G. Note that only the induced matching
      instances are considered in GDV. (2 marks)
      Marking for Q4.1: 1 mark is given for correct betweenness centrality
      values. 1 mark is given for correct closeness centrality values.
      Marking for Q4.2: 1 mark is given for each correct vector. Incorrect
      values in each vector will result in a deduction of marks.
      END OF QUESTIONS
      2024/7/25 11:34 COMP9312 24T2 Assignment 2


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