加勒比久久综合,国产精品伦一区二区,66精品视频在线观看,一区二区电影

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COMP9444、代做Python語言程序

時間:2024-07-03  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯



COMP9444 Neural Networks and Deep Learning
Term 2, 2024
Assignment - Characters and Hidden Unit Dynamics
Due: Tuesday 2 July, 23:59 pm
Marks: 20% of final assessment
In this assignment, you will be implementing and training neural network models for three different tasks, and analysing the results. You are to submit two Python files kuzu.py
and check.py, as well as a written report hw1.pdf (in pdf format).
Provided Files
Copy the archive hw1.zip into your own filespace and unzip it. This should create a directory hw1, subdirectories net and plot, and eight Python files kuzu.py, check.py,
kuzu_main.py, check_main.py, seq_train.py, seq_models.py, seq_plot.py and anb2n.py.
Your task is to complete the skeleton files kuzu.py and check.py and submit them, along with your report.
Part 1: Japanese Character Recognition
For Part 1 of the assignment you will be implementing networks to recognize handwritten Hiragana symbols. The dataset to be used is Kuzushiji-MNIST or KMNIST for short.
The paper describing the dataset is available here. It is worth reading, but in short: significant changes occurred to the language when Japan reformed their education system in
1868, and the majority of Japanese today cannot read texts published over 150 years ago. This paper presents a dataset of handwritten, labeled examples of this old-style script
(Kuzushiji). Along with this dataset, however, they also provide a much simpler one, containing 10 Hiragana characters with 7000 samples per class. This is the dataset we will be
using.
Text from 1772 (left) compared to 1**0 showing the standardization of written Japanese.
1. [1 mark] Implement a model NetLin which computes a linear function of the pixels in the image, followed by log softmax. Run the code by typing:
python3 kuzu_main.py --net lin
Copy the final accuracy and confusion matrix into your report. The final accuracy should be around 70%. Note that the rows of the confusion matrix indicate the target
character, while the columns indicate the one chosen by the network. (0="o", 1="ki", 2="su", 3="tsu", 4="na", 5="ha", 6="ma", 7="ya", 8="re", 9="wo"). More examples
of each character can be found here.
2. [1 mark] Implement a fully connected 2-layer network NetFull (i.e. one hidden layer, plus the output layer), using tanh at the hidden nodes and log softmax at the output
node. Run the code by typing:
python3 kuzu_main.py --net full
Try different values (multiples of 10) for the number of hidden nodes and try to determine a value that achieves high accuracy (at least 84%) on the test set. Copy the final
accuracy and confusion matrix into your report, and include a calculation of the total number of independent parameters in the network.
3. [2 marks] Implement a convolutional network called NetConv, with two convolutional layers plus one fully connected layer, all using relu activation function, followed by
the output layer, using log softmax. You are free to choose for yourself the number and size of the filters, metaparameter values (learning rate and momentum), and whether
to use max pooling or a fully convolutional architecture. Run the code by typing:
python3 kuzu_main.py --net conv
Your network should consistently achieve at least 93% accuracy on the test set after 10 training epochs. Copy the final accuracy and confusion matrix into your report, and
include a calculation of the total number of independent parameters in the network.
4. [4 marks] Briefly discuss the following points:
a. the relative accuracy of the three models,
b. the number of independent parameters in each of the three models,
c. the confusion matrix for each model: which characters are most likely to be mistaken for which other characters, and why?
Part 2: Multi-Layer Perceptron
In Part 2 you will be exploring 2-layer neural networks (either trained, or designed by hand) to classify the following data:
1. [1 mark] Train a 2-layer neural network with either 5 or 6 hidden nodes, using sigmoid activation at both the hidden and output layer, on the above data, by typing:
python3 check_main.py --act sig --hid 6
You may need to run the code a few times, until it achieves accuracy of 100%. If the network appears to be stuck in a local minimum, you can terminate the process with
?ctrl?-C and start again. You are free to adjust the learning rate and the number of hidden nodes, if you wish (see code for details). The code should produce images in the
plot subdirectory graphing the function computed by each hidden node (hid_6_?.jpg) and the network as a whole (out_6.jpg). Copy these images into your report.
2. [2 marks] Design by hand a 2-layer neural network with 4 hidden nodes, using the Heaviside (step) activation function at both the hidden and output layer, which correctly
classifies the above data. Include a diagram of the network in your report, clearly showing the value of all the weights and biases. Write the equations for the dividing line
determined by each hidden node. Create a table showing the activations of all the hidden nodes and the output node, for each of the 9 training items, and include it in your
report. You can check that your weights are correct by entering them in the part of check.py where it says "Enter Weights Here", and typing:
python3 check_main.py --act step --hid 4 --set_weights
3. [1 mark] Now rescale your hand-crafted weights and biases from Part 2 by multiplying all of them by a large (fixed) number (for example, 10) so that the combination of
rescaling followed by sigmoid will mimic the effect of the step function. With these re-scaled weights and biases, the data should be correctly classified by the sigmoid
network as well as the step function network. Verify that this is true by typing:
python3 check_main.py --act sig --hid 4 --set_weights
Once again, the code should produce images in the plot subdirectory showing the function computed by each hidden node (hid_4_?.jpg) and the network as a whole
(out_4.jpg). Copy these images into your report, and be ready to submit check.py with the (rescaled) weights as part of your assignment submission.
Part 3: Hidden Unit Dynamics for Recurrent Networks
In Part 3 you will be investigating the hidden unit dynamics of recurrent networks trained on language prediction tasks, using the supplied code seq_train.py and seq_plot.py.
1. [2 marks] Train a Simple Recurrent Network (SRN) on the Reber Grammar prediction task by typing
python3 seq_train.py --lang reber
This SRN has 7 inputs, 2 hidden units and 7 outputs. The trained networks are stored every 10000 epochs, in the net subdirectory. After the training finishes, plot the
hidden unit activations at epoch 50000 by typing
python3 seq_plot.py --lang reber --epoch 50
The dots should be arranged in discernable clusters by color. If they are not, run the code again until the training is successful. The hidden unit activations are printed
according to their "state", using the colormap "jet":
Based on this colormap, annotate your figure (either electronically, or with a pen on a printout) by drawing a circle around the cluster of points corresponding to each state
in the state machine, and drawing arrows between the states, with each arrow labeled with its corresponding symbol. Include the annotated figure in your report.
2. [1 mark] Train an SRN on the anbn language prediction task by typing
python3 seq_train.py --lang anbn
The anbn language is a concatenation of a random number of A's followed by an equal number of B's. The SRN has 2 inputs, 2 hidden units and 2 outputs.
Look at the predicted probabilities of A and B as the training progresses. The first B in each sequence and all A's after the first A are not deterministic and can only be
predicted in a probabilistic sense. But, if the training is successful, all other symbols should be correctly predicted. In particular, the network should predict the last B in
each sequence as well as the subsequent A. The error should be consistently in the range of 0.01 to 0.03. If the network appears to have learned the task successfully, you
can stop it at any time using ?cntrl?-c. If it appears to be stuck in a local minimum, you can stop it and run the code again until it is successful.
After the training finishes, plot the hidden unit activations by typing
python3 seq_plot.py --lang anbn --epoch 100
Include the resulting figure in your report. The states are again printed according to the colormap "jet". Note, however, that these "states" are not unique but are instead used
to count either the number of A's we have seen or the number of B's we are still expecting to see.
Briefly explain how the anbn prediction task is achieved by the network, based on the generated figure. Specifically, you should describe how the hidden unit activations
change as the string is processed, and how it is able to correctly predict the last B in each sequence as well as the following A.
3. [2 marks] Train an SRN on the anbncn language prediction task by typing
python3 seq_train.py --lang anbncn
The SRN now has 3 inputs, 3 hidden units and 3 outputs. Again, the "state" is used to count up the A's and count down the B's and C's. Continue training (and re-start, if
necessary) for 200k epochs, or until the network is able to reliably predict all the C's as well as the subsequent A, and the error is consistently in the range of 0.01 to 0.03.
After the training finishes, plot the hidden unit activations at epoch 200000 by typing
python3 seq_plot.py --lang anbncn --epoch 200
(you can choose a different epoch number, if you wish). This should produce three images labeled anbncn_srn3_??.jpg, and also display an interactive 3D figure. Try to
rotate the figure in 3 dimensions to get one or more good view(s) of the points in hidden unit space, save them, and include them in your report. (If you can't get the 3D
figure to work on your machine, you can use the images anbncn_srn3_??.jpg)
Briefly explain how the anbncn prediction task is achieved by the network, based on the generated figure. Specifically, you should describe how the hidden unit activations
change as the string is processed, and how it is able to correctly predict the last B in each sequence as well as all of the C's and the following A.
4. [3 marks] This question is intended to be more challenging. Train an LSTM network to predict the Embedded Reber Grammar, by typing
python3 seq_train.py --lang reber --embed True --model lstm --hid 4
You can adjust the number of hidden nodes if you wish. Once the training is successful, try to analyse the behavior of the LSTM and explain how the task is accomplished
(this might involve modifying the code so that it returns and prints out the context units as well as the hidden units).
Submission
You should submit by typing
give cs9444 hw1 kuzu.py check.py hw1.pdf
You can submit as many times as you like    later submissions will overwrite earlier ones. You can check that your submission has been received by using the following
command:
9444 classrun -check hw1
The submission deadline is Tuesday 2 July, 23:59pm. In accordance with UNSW-wide policies, 5% penalty will be applied for every 24 hours late after the deadline, up to a
maximum of 5 days, after which submissions will not be accepted.
Additional information may be found in the FAQ and will be considered as part of the specification for the project. You should check this page regularly.
Plagiarism Policy
Group submissions will not be allowed for this assignment. Your code and report must be entirely your own work. Plagiarism detection software will be used to compare all
submissions pairwise (including submissions for similar assignments from previous offering, if appropriate) and serious penalties will be applied, particularly in the case of repeat
offences.
DO NOT COPY FROM OTHERS; DO NOT ALLOW ANYONE TO SEE YOUR CODE
Please refer to the UNSW Policy on Academic Integrity and Plagiarism if you require further clarification on this matter.
Good luck!
請加QQ:99515681  郵箱:99515681@qq.com   WX:codinghelp














 

掃一掃在手機打開當前頁
  • 上一篇:菲律賓帕西格離馬尼拉多遠?帕西格是一個怎樣的城市?
  • 下一篇:菲律賓大使館簽證中心電話(大使館可以辦理的業務)
  • 無相關信息
    合肥生活資訊

    合肥圖文信息
    2025年10月份更新拼多多改銷助手小象助手多多出評軟件
    2025年10月份更新拼多多改銷助手小象助手多
    有限元分析 CAE仿真分析服務-企業/產品研發/客戶要求/設計優化
    有限元分析 CAE仿真分析服務-企業/產品研發
    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
  • 短信驗證碼 目錄網 排行網

    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

    亚洲久草在线| 超碰在线cao| 国产在线不卡一区二区三区| 久久亚洲视频| 精品国产乱码久久久| 亚洲国产日本| 亚洲欧洲美洲av| 国产字幕视频一区二区| 日韩美女毛片| 欧美伊人久久| 激情黄产视频在线免费观看| 欧美大片专区| 国产精品sss在线观看av| 中文字幕日韩欧美精品高清在线| 中文字幕在线免费观看视频| 久久国产综合| 日韩一区免费| 欧美久久亚洲| 久久综合导航| 欧美日韩免费观看视频| 狠狠色丁香久久综合频道| 综合激情五月婷婷| 国产成人影院| 欧美aaaaa成人免费观看视频| 多野结衣av一区| 亚洲黄页一区| 国语产色综合| 青青一区二区三区| 日韩有码一区| 欧美黄色一区二区| 日日夜夜一区二区| 99蜜月精品久久91| 成人av免费电影网站| 日韩午夜激情| 激情综合网五月| 日韩精品网站| 秋霞欧美视频| av日韩在线播放| 久久69av| 日韩极品在线观看| 国产伦精品一区二区三区千人斩 | 一本色道久久精品| 久久久久国产精品一区三寸| 午夜视频一区二区在线观看| 久久爱www成人| 久久av导航| 国产欧美成人| 国产欧美一区| 日韩av中文在线观看| 国产欧美日韩精品高清二区综合区| 麻豆中文一区二区| 久久资源在线| 欧美精品99| 99精品视频在线免费播放| 999精品视频在线观看| 亚洲综合五月| 欧美国产日本| 国产尤物久久久| 日韩成人精品视频| 911精品国产| jizz国产精品| 久久中文字幕av| 欧美日韩激情| 亚洲一区中文| 成人一二三区| 神马午夜在线视频| 99热播精品免费| 麻豆精品在线看| 伊人久久大香| 亚洲色图丝袜| 一本色道69色精品综合久久| 福利片在线一区二区| 99久久九九| 99xxxx成人网| jizzjizz中国精品麻豆| 久久99久久99精品免观看软件| 亚洲精品777| 欧美日韩 国产精品| 亚洲精品推荐| 国产一区福利| 伊人成综合网| 97国产精品| 国产精品天堂蜜av在线播放| 亚洲天堂免费| 日韩免费成人| 久久中文字幕av| 日本欧美在线观看| 欧美综合社区国产| 亚洲一区导航| 国产毛片久久久| 99热免费精品在线观看| 亚洲最新无码中文字幕久久| 久久综合综合久久综合| 国产成人1区| 久久蜜桃精品| 蜜桃视频免费观看一区| 久久精品黄色| 欧美极品在线观看| 99久久精品国产亚洲精品| 每日更新成人在线视频| 欧美日韩精品免费观看视完整| 影音先锋亚洲一区| 日韩精品一级| 亚洲一区二区成人| 91在线亚洲| 国产一区二区三区四区| 欧美日韩色图| 日韩欧美高清| 欧洲精品99毛片免费高清观看| 久久激情婷婷| yellow在线观看网址| 麻豆精品在线观看| 狠狠一区二区三区| 免费视频最近日韩| 日本欧美一区二区三区| 欧美福利在线播放网址导航| 免费黄网站欧美| 亚洲中无吗在线| 欧美亚洲tv| bbw在线视频| 国产亚洲字幕| 雨宫琴音一区二区在线| 美女视频一区二区三区| 精品久久综合| 天堂在线中文网官网| 国产a久久精品一区二区三区| 激情久久久久久久| 日韩一区亚洲二区| 午夜日韩影院| 免费不卡在线观看| 国产精品成人3p一区二区三区 | 国产精品av一区二区| 免费观看亚洲| 久久不见久久见免费视频7| 亚洲精品一区二区在线看| 日韩欧乱色一区二区三区在线| 在线观看视频一区二区三区| 蜜臀av国产精品久久久久| 亚洲精品无播放器在线播放| 午夜av一区| 麻豆成人91精品二区三区| 久久久久免费av| 91成人抖音| 四虎884aa成人精品最新| 日韩在线观看一区| 日韩中文字幕视频网| 蜜臀av性久久久久av蜜臀妖精| 精品一区二区三区亚洲| 亚洲一区二区三区免费在线观看| 中文精品久久| 奶水喷射视频一区| 亚洲bt欧美bt精品777| 亚洲欧美卡通另类91av| 欧美三级一区| 男女激情视频一区| 日韩av在线播放中文字幕| 欧美3p在线观看| 经典三级久久| 免费成人在线电影| 久久激情av| 日韩高清不卡在线| 亚洲激情中文| 国产videos久久| av在线视屏| 欧美激情久久久久久久久久久 | 国产a久久精品一区二区三区| 蜜桃视频免费观看一区| 9999久久久久| 日韩精品国产欧美| 亚洲精品国产首次亮相| 精品一区二区三区中文字幕视频 | 国产极品一区| 午夜久久美女| 亚洲成在人线免费观看| 亚洲欧洲自拍| 国产91久久精品一区二区| 亚洲精品免费观看| 日韩中文字幕区一区有砖一区| 久久wwww| 精品国产黄a∨片高清在线| 亚洲国产一区二区三区在线播放| 国产aⅴ精品一区二区三区久久| 手机在线观看av网站| 激情综合亚洲| 欧美成人精品一级| 国产精品字幕| 红桃视频欧美| 激情综合五月| 亚洲美女色禁图| 热三久草你在线| 欧美大片专区| 98视频精品全部国产| 青青青伊人色综合久久| 欧美a级成人淫片免费看| 精品国产一区二区三区不卡蜜臂 | 国产91欧美| 美女精品网站| 99热在线成人| 日韩av中文在线观看| 免费视频一区|