<em id="rw4ev"></em>

      <tr id="rw4ev"></tr>

      <nav id="rw4ev"></nav>
      <strike id="rw4ev"><pre id="rw4ev"></pre></strike>
      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

      ENVS363代做、R設計編程代寫

      時間:2024-01-05  來源:合肥網hfw.cc  作者:hfw.cc 我要糾錯



      ENVS363/563.3 - A Computational Essay 2023/24
      Overview and Instructions
      Due Date: 8th January 2024
      50% of the final mark
      Overview
      Here’s the premise. You will take the role of a real-world GIS analyst or spatial data scientist tasked
      to explore datasets on the San Francisco Bay Area (often just called the Bay Area) and find useful
      insights for a variety of city decision-makers. It does not matter if you have never been to the Bay
      Area. In fact, this will help you focus on what you can learn about the city through the data, without
      the influence of prior knowledge. Furthermore, the assessment will not be marked based on how
      much you know about the San Francisco Bay Area but instead about how much you can show you
      have learned through analysing data. You will need contextualise your project by highlighting the
      opportunities and limitations of ‘old’ and ‘new’ forms of spatial data and reference relevant
      literature.
      Format
      A computational essay using Quarto. The assignment should be carried out fully in Quarto.
      What is a Computational Essay?
      A computational essay is an essay whose narrative is supported by code and computational results
      that are included in the essay itself. This piece of assessment is equivalent to 4,000 words.
      However, this is the overall weight. Since you will need to create not only narrative but also code
      and figures, here are the requirements:
      • Maximum of 1,000 words (ordinary text) (references do not contribute to the word
      count). You should answer the specified questions within the narrative. The questions
      should be included within a wider analysis.
      • Up to five maps or figures (a figure may include more than one map and will only count
      as one but needs to be integrated in the same overall output)
      • Up to one table
      There are three kinds of elements in a computational essay.
      1. Ordinary text (in English)
      2. Computer input (R code)
      3. Computer output
      These three elements all work together to express what’s being communicated.
      Submission
      You must submit 1 electronic copy of your assessment via Canvas by the published
      deadline. The format of the file must be an html document. Please do not include your
      name anywhere in the documents.
      • Please refer to the ENVS363/563 Assessment criteria. This document includes the parts
      you should include in your Computational Essay.
      Data
      The assignment relies on datasets and has two parts. Each dataset is explained with more detail
      below.
      ENVS363-563 Computational Essay
      • Data made available on Murray Cox’s website as part of his “Inside Airbnb” project which
      you can download (http://insideairbnb.com/). The website periodically publishes
      snapshots of Airbnb listings around the world. You should Download the San Francisco
      data, the San Mateo data and the Oakland data. These are all part of the Bay Area.
      Please Note: that for best results you will need to drop some of the outliers.
      • Socio-economic variables for the Bay Area. Source: American Community Survey (ACS)
      2016-2020, US Census Bureau. Observations: 1039; Variables: **2; Years: 2016-2020.
      o A subset of variables from the latest ACS has already been retrieved for you in
      ACS_2016_2020_vars.csv. However, you have access to ALL variables in the
      American Community Survey (ACS) 2016-2020 through the R package
      Tidycensus.
      o You are strongly recommended to use the census API in the R package
      Tidycensus to extract your variables of interest instead of the csv. For more
      information about the ACS (2016-2020) you can have a look at:
      https://www.census.gov/data/developers/data-sets/acs-5year.html and
      https://api.census.gov/data/2020/acs/acs5/variables.html.
      If you want to visualise some aspects at different Subnational Administrative boundaries, you can
      download USA boundaries from GADM. You can also find other geodata for the Bay Area in the
      Berkeley Library.
      IMPORTANT - Students of ENVS563 will need to source, at least, two additional datasets relating
      to San Francisco or the Bay Area. You can use any dataset that will help you complete the tasks
      below but, if you need some inspiration, have a look at the following:
      • Geodata for the Bay Area in the Berkeley Library.
      • San Francisco Open Data Portal: https://datasf.org/opendata/
      • Data World: https://data.world/datasets/san-francisco
      • NASA Data: https://earthdata.nasa.gov/earth-observation-data/near-real-time/hazardsand-disasters/air-quality
      Part 1 – Common
      1.1 Collecting and importing the data
      1.1.1 Import and explore
      1.2 Preparing the data
      1.2.1 What CRS are you going to use? Justify your answer.
      1.3 Discussion of the data
      • Present and describe the data sets used for this project.
      1.4 Mapping and Data visualisation
      1.4.1 Airbnb in the BAY AREA at Neighbourhood Level
      • Summarise the data. Using Bay Area zipcodes/ ZCTAs obtained from Berkeley Library.
      This is slightly different from the Airbnb neighbourhood file. Obtain a count of listings by
      neighbourhood.
      ENVS363-563 Computational Essay
      • Map 1.1: Number of listings per zipcode. Explore the spatial distribution of the data using
      choropleths. Style the layers using a colour ramp.
      • Map 1.2: Average price per zipcode. Explore the spatial distribution of the data using
      choropleths. Style the layers using a colour ramp.
      Justify your data classification methods and visualization choices. You should include these maps
      in your assessment submission. The maps should be well-presented and include a short
      description.
      Questions to answer within your analysis: How does the Inside Airbnb data compare to other ‘new’
      forms of spatial data? Discuss the potential insights and biases, as well as opportunities and
      limitations of the Airbnb data.
      1.4.2. Socio-economic variables from the ACS data
      Select two variables from American Community Survey data. These could be but are not limited
      to population density, median income, median age, unemployed, percentage of black population,
      percentage of Hispanic population or education level. See the Appendix in this document for help.
      If you chose to calculate population percentages, make sure you standardise the table by the
      population size of each tract.
      • Map2: Explore the spatial distribution of your chosen variables using choropleths. Style the
      variables using a colour ramp. Justify your data classification methods and visualization
      choices. You should include these maps in your assessment submission. The maps should
      be well-presented and include a short description.
      Questions to answer within your analysis. Comment on the details of your map and analyse the
      results. What are the main types of neighbourhoods you identify? Which characteristics help you
      delineate this typology? What can you say about the spatial distribution of your socio-economic
      variable of interest? If you had to use this classification to evaluate where Airbnbs would cluster,
      what would your hypothesis be? Why?
      For some stylised (not necessarily accurate) facts about the Bay Area see here.
      1.4.3. Combining Data sets
      • Map 3: Plot the natural logarithm of price (ln of price) of Airbnbs in the San Francisco Bay
      Area together (point plot) with one of your chosen socio-economic variables of interest
      at zipcode level using ggplot or tmap or mapsf (polygon plot). There are various ways of
      doing this. The maps should be well-presented.
      Questions to answer within your analysis. Comment on the details of your map and analyse the
      results. Does this map tell you more about the relationship between Airbnb location/price and
      your socio-economic variable of choice? Explain your answer.
      1.4.4. Autocorrelation
      • Map 4: Explore the degree of spatial autocorrelation. Describe the concepts behind your
      approach and interpret your results.
      ENVS363-563 Computational Essay
      Part 2 – Chose your own analysis
      For this one, you need to pick one of the following three options. Only one, and make the most
      of it.
      Please Note: This part of the assignment can be done on the Bay Area as a whole or you can
      zoom in on one of the counties. For example, you could just focus on San Francisco.
      1. Create a geodemographic classification and interpret the results. In the process, answer
      the following questions:
      • What are the main types of neighbourhoods you identify?
      • Which characteristics help you delineate this typology?
      • If you had to use this classification to target areas in most need, how would you use it?
      why?
      2. Create a regionalisation and interpret the results. In the process, answer at least the
      following questions:
      • How is the city partitioned by your data?
      • What do you learn about the geography of the city from the regionalisation?
      • What would one useful application of this regionalisation in the context of urban policy?
      3. Use the OpenStreetMap package to osmdata download Point of Interest (POIs) Data for
      the Bay Area or San Francisco. Using this this data, complete the following tasks:
      • Visualise the dataset appropriately and discuss why you have taken your specific
      approach
      • Use DBSCAN to identify areas of the city with high density of POIs, which we will call
      areas of interest (AOI). In completing this, answer the following questions:
      o What parameters have you used to run DBSCAN? Why?
      o What do the clusters help you learn about areas of interest in the city?
      o Name one example of how these AOIs can be of use for the city. You can take
      the perspective of an urban planner, a policy maker, an operational
      practitioner (e.g. police, trash collection), an urban entrepreneur, or any
      other role you envision.
      Resources to help you. See also suggested bibliography in slides throughout the course.
      請加QQ:99515681 或郵箱:99515681@qq.com   WX:codehelp

      掃一掃在手機打開當前頁
    1. 上一篇:純原貨,莆田鞋在哪里可以買,最穩商家
    2. 下一篇:代做CE 314、代寫Python/Java編程
    3. 無相關信息
      合肥生活資訊

      合肥圖文信息
      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
      戴納斯帝壁掛爐全國售后服務電話24小時官網400(全國服務熱線)
      戴納斯帝壁掛爐全國售后服務電話24小時官網
      菲斯曼壁掛爐全國統一400售后維修服務電話24小時服務熱線
      菲斯曼壁掛爐全國統一400售后維修服務電話2
      美的熱水器售后服務技術咨詢電話全國24小時客服熱線
      美的熱水器售后服務技術咨詢電話全國24小時
      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
    4. 上海廠房出租 短信驗證碼 酒店vi設計

      成人久久18免费网站入口