合肥生活安徽新聞合肥交通合肥房產(chǎn)生活服務(wù)合肥教育合肥招聘合肥旅游文化藝術(shù)合肥美食合肥地圖合肥社保合肥醫(yī)院企業(yè)服務(wù)合肥法律

        代寫(xiě)CSE 158、代做Python語(yǔ)言編程

        時(shí)間:2023-11-18  來(lái)源:合肥網(wǎng)hfw.cc  作者:hfw.cc 我要糾錯(cuò)


        CSE 158/258, DSC 256, MGTA 461, Fall 2023: Assignment 1

        Instructions

        In this assignment you will build recommender systems to make predictions related to video game reviews

        from Steam.

        Submissions will take the form of prediction files uploaded to gradescope, where their test set performance

        will be evaluated on a leaderboard. Most of your grade will be determined by ‘absolute’ cutoffs;

        the leaderboard ranking will only determine enough of your assignment grade to make the

        assignment FUN.

        The assignment is due Monday, Nov 20, though make sure you upload solutions to the leaderboard

        regularly.

        You should submit two files:

        writeup.txt a brief, plain-text description of your solutions to each task; please prepare this adequately in

        advance of the submission deadline; this is only intended to help us follow your code and does not need

        to be detailed.

        assignment1.py A python file containing working code for your solutions. The autograder will not execute

        your code; this file is required so that we can assign partial grades in the event of incorrect solutions,

        check for plagiarism, etc. Your solution should clearly document which sections correspond to

        each task. We may occasionally run code to confirm that your outputs match submitted answers, so

        please ensure that your code generates the submitted answers.1

        Along with two files corresponding to your predictions:

        predictions Played.csv, predictions Hours.csv Files containing your predictions for each (test) instance

        (you should submit two of the above three files). The provided baseline code demonstrates how to

        generate valid output files.

        To begin, download the files for this assignment from:

        https://cseweb.ucsd.edu/classes/fa23/cse258-a/files/assignment1.tar.gz

        Files

        train.json.gz 175,000 instances to be used for training. This data should be used for both the ‘play prediction’

        and ‘time played prediction’ tasks. It is not necessary to use all observations for training, for example if

        doing so proves too computationally intensive.

        userID The ID of the user. This is a hashed user identifier from Steam.

        gameID The ID of the game. This is a hashed game identifier from Steam.

        text Text of the user’s review of the game.

        date Date when the review was entered.

        hours How many hours the user played the game.

        hours transformed log2

        (hours+1). This transformed value is the one we are trying to predict.

        pairs Played.csv Pairs on which you are to predict whether a game was played.

        pairs Hours.csv Pairs (userIDs and gameIDs) on which you are to predict time played..

        baselines.py A simple baseline for each task, described below.

        Please do not try to collect these reviews from Steam, or to reverse-engineer the hashing function I used to

        anonymize the data. Doing so will not be easier than successfully completing the assignment. We will run

        the code of any solution suspected of violating the competition rules, and you may be penalized

        if your code does produce your submitted solution.

        1Don’t worry too much about dependencies if importing non-standard libraries.

        1

        Tasks

        You are expected to complete the following tasks:

        Play prediction Predict given a (user,game) pair from ‘pairs Played.csv’ whether the user would play the

        game (0 or 1). Accuracy will be measured in terms of the categorization accuracy (fraction of correct

        predictions). The test set has been constructed such that exactly 50% of the pairs correspond to played

        games and the other 50% do not.

        Time played prediction Predict how long a person will play a game (transformed as log2

        (hours + 1), for

        those (user,game) pairs in ‘pairs Hours.csv’. Accuracy will be measured in terms of the mean-squared

        error (MSE).

        A competition page has been set up on Kaggle to keep track of your results compared to those of other

        members of the class. The leaderboard will show your results on half of the test data, but your ultimate score

        will depend on your predictions across the whole dataset.

        Grading and Evaluation

        This assignment is worth 22% of your grade. You will be graded on the following aspects. Each of the two

        tasks is worth 10 marks (i.e., 10% of your grade), plus 2 marks for the written report.

        • Your ability to obtain a solution which outperforms the leaderboard baselines on the unseen portion of

        the test data (5 marks for each task). Obtaining full marks requires a solution which is substantially

        better than baseline performance.

        • Your ranking for each of the tasks compared to other students in the class (3 marks for each task).

        • Obtain a solution which outperforms the baselines on the seen portion of the test data (i.e., the leaderboard). This is a consolation prize in case you overfit to the leaderboard. (2 mark for each task).

        Finally, your written report should describe the approaches you took to each of the tasks. To obtain good

        performance, you should not need to invent new approaches (though you are more than welcome to!) but

        rather you will be graded based on your decision to apply reasonable approaches to each of the given tasks (2

        marks total).

        Baselines

        Simple baselines have been provided for each of the tasks. These are included in ‘baselines.py’ among the files

        above. They are mostly intended to demonstrate how the data is processed and prepared for submission to

        Gradescope. These baselines operate as follows:

        Play prediction Find the most popular games that account for 50% of interactions in the training data.

        Return ‘1’ whenever such a game is seen at test time, ‘0’ otherwise.

        Time played prediction Return the global average time, or the user’s average if we have seen them before

        in the training data.

        Running ‘baselines.py’ produces files containing predicted outputs (these outputs can be uploaded to Gradescope). Your submission files should have the same format.

        請(qǐng)加QQ:99515681 或郵箱:99515681@qq.com   WX:codehelp

         

        掃一掃在手機(jī)打開(kāi)當(dāng)前頁(yè)
      1. 上一篇:代寫(xiě)COMP 340 Operating Systems
      2. 下一篇:SEHH2042代做、代寫(xiě)c++,Java編程
      3. 無(wú)相關(guān)信息
        合肥生活資訊

        合肥圖文信息
        出評(píng) 開(kāi)團(tuán)工具
        出評(píng) 開(kāi)團(tuán)工具
        挖掘機(jī)濾芯提升發(fā)動(dòng)機(jī)性能
        挖掘機(jī)濾芯提升發(fā)動(dòng)機(jī)性能
        戴納斯帝壁掛爐全國(guó)售后服務(wù)電話24小時(shí)官網(wǎng)400(全國(guó)服務(wù)熱線)
        戴納斯帝壁掛爐全國(guó)售后服務(wù)電話24小時(shí)官網(wǎng)
        菲斯曼壁掛爐全國(guó)統(tǒng)一400售后維修服務(wù)電話24小時(shí)服務(wù)熱線
        菲斯曼壁掛爐全國(guó)統(tǒng)一400售后維修服務(wù)電話2
        美的熱水器售后服務(wù)技術(shù)咨詢電話全國(guó)24小時(shí)客服熱線
        美的熱水器售后服務(wù)技術(shù)咨詢電話全國(guó)24小時(shí)
        海信羅馬假日洗衣機(jī)亮相AWE  復(fù)古美學(xué)與現(xiàn)代科技完美結(jié)合
        海信羅馬假日洗衣機(jī)亮相AWE 復(fù)古美學(xué)與現(xiàn)代
        合肥機(jī)場(chǎng)巴士4號(hào)線
        合肥機(jī)場(chǎng)巴士4號(hào)線
        合肥機(jī)場(chǎng)巴士3號(hào)線
        合肥機(jī)場(chǎng)巴士3號(hào)線
      4. 短信驗(yàn)證碼 酒店vi設(shè)計(jì)

        日韩精品在线播放| 99er热精品视频| 四虎国产精品免费永久在线| 精品国产a∨无码一区二区三区| 精品久久久久久中文字幕| 日韩精品中文字幕第2页| 国产精品一卡二卡三卡四卡| 精品丝袜国产自在线拍亚洲| 91天堂素人精品系列网站| HEYZO无码综合国产精品| 四虎永久在线精品视频免费观看 | 国产精品高清久久久久久久 | 精品久久无码中文字幕| 久久久久女人精品毛片| 国产精品99爱免费视频| 美女精品永久福利在线| 亚洲午夜精品一区二区麻豆| 国产高清精品入口91| 国产精品一二三区| 亚洲乱人伦精品图片| 亚洲精品国产成人中文| 中文国产成人精品久久一区 | 99在线视频精品费观看视| 国产啪亚洲国产精品无码| 国产精品高清m3u8在线播放| 国产成人精品久久久久| 国产精品毛片AV久久66| 免费看国产精品3a黄的视频| 香蕉国产精品频视| 538国产精品一区二区在线| 精品国自产拍天天拍2021| 亚洲精品国产高清在线观看| 无码成人精品区在线观看| 精品久久久久久久国产潘金莲 | 国产成人精品高清在线观看96| 国产久热精品无码激情| 精品无码久久久久久久久水蜜桃| 国外AV无码精品国产精品 | 探花国产精品三级在线播放| 成人国产激情福利久久精品| 日韩午夜在线观看|