Topic modeling | Data Science | University of Texas at Arlington

  Question 1

This question is designed to help you understand topic modeling  better as well as how to visualize topic modeling results, aims to  collect the human meanings of documents. Based on the yelp review data  (only the review text will be used for this question), which can be  download from Dropbox: https://www.dropbox.com/s/59hsrk56sfwh9u2/Assignment%20four%20data%20Yelp%20%28question%201%20and%202%29.zip?dl=0, select two models and write a python program to identify the top 20 topics (with 15 words for each topic) in the dataset.  Before answering this question, please review the materials in lesson  8, as well as the introduction of these models by the links provided.(1)   Labeled LDA (LLDA): https://github.com/JoeZJH/Labeled-LDA-Python(2)   Biterm Topic Model (BTM): https://github.com/markoarnauto/biterm(3)   HMM-LDA: https://github.com/dongwookim-ml/python-topic-model(4)   SupervisedLDA: https://github.com/dongwookim-ml/python-topic-model/tree/master/notebook(5)   Relational Topic Model: https://github.com/dongwookim-ml/python-topic-model/tree/master/notebook(6)   LDA2VEC: https://github.com/cemoody/lda2vec(7)   BERTopic: https://github.com/MaartenGr/BERTopic(8)   LDA+BERT Topic Modeling: https://www.kaggle.com/dskswu/topic-modeling-bert-lda(9)   Clustering for Topic models: (paper: https://arxiv.org/abs/2004.14914), (code: https://github.com/adalmia96/Cluster-Analysis)The following information should be reported:(1) Top 20 clusters for topic modeling.(2) Summarize and describe the topic for each cluster. (3) Visualize the topic modeling reasults by using pyLDAVis: https://www.machinelearningplus.com/nlp/topic-modeling-visualization-how-to-present-results-lda-models/#14.-pyLDAVis Question 2: Yelp Review Sentiment Analysis**
 Sentiment analysis also known as opinion mining is a sub field  within Natural Language Processing (NLP) that builds machine learning  algorithms to classify a text according to the sentimental polarities of  opinions it contains, e.g., positive, negative, neutral. The purpose of  this question is to develop a machine learning classifier for sentiment  analysis. Based on the dataset from assignment three, write a python  program to implement a sentiment classifier and evaluate its  performance. Notice: 80% data for training and 20% data for testing.The data can be download from Dropbox: https://www.dropbox.com/s/59hsrk56sfwh9u2/Assignment%20four%20data%20Yelp%20%28question%201%20and%202%29.zip?dl=0
The sentiment of can be accessed based on the star rating, if  no star information avaliable for a record, just remove that record.  Detail star and sentiment level can be matched blew:Very positive = 5 starsPositive = 4 starsNeutral = 3 starsNegative = 2 starsVery negative = 1 starHere is code for yelp data preprocessing: https://github.com/Yelp/dataset-examples. Answer the following questions:(1) Features used for sentiment classification and explain why you  select these features (tf-idf, sentiment lexicon, word2vec, etc).  Considering achieve the best performance as you can. (2) Select two of the supervised learning algorithm from scikit-learn library: https://scikit-learn.org/stable/supervised_learning.html#supervised-learning, to build a sentiment classifier respectively. (3) Compare the performance over accuracy, precision, recall, and F1  score for the two algorithms you selected. Here is the reference of how  to calculate these metrics: https://towardsdatascience.com/accuracy-precision-recall-or-f1-331fb37c5cb9.  

Question 3: House price prediction

  You are required to build a regression model to  predict the house price with 79 explanatory variables describing  (almost) every aspect of residential homes. The purpose of this question  is to practice regression analysis, an supervised learning model. The  training data, testing data, and data description files can be download  from Dropbox: https://www.dropbox.com/s/52j9hpxppfo921o/assignment4-question3-data.zip?dl=0. Here is an axample for the implementation: https://towardsdatascience.com/linear-regression-in-python-predict-the-bay-areas-home-price-5c91c8378878.   

Calculate the price of your order

Choose an academic level, add pages, and the paper type you want.
To reduce the cost of our essay writing services, select the lengthier deadline.
We can't believe we just said that to you.

550 words
We'll send you the first draft for approval by September 11, 2018 at 10:52 AM
Total price:
$26
The price is based on these factors:
Academic level
Number of pages
Urgency
Basic features
  • Free title page and bibliography
  • Unlimited revisions
  • Plagiarism-free guarantee
  • Money-back guarantee
  • 24/7 support
On-demand options
  • Writer’s samples
  • Part-by-part delivery
  • Overnight delivery
  • Copies of used sources
  • Expert Proofreading
Paper format
  • 275 words per page
  • 12 pt Arial/Times New Roman
  • Double line spacing
  • Any citation style (APA, MLA, Chicago/Turabian, Harvard)

Our guarantees

Delivering a high-quality product at a reasonable price is not enough anymore.
That’s why we have developed 5 beneficial guarantees that will make your experience with our service enjoyable, easy, and safe.

Money-back guarantee

You have to be 100% sure of the quality of your product to give a money-back guarantee. This describes us perfectly. Make sure that this guarantee is totally transparent.

Read more

Zero-plagiarism guarantee

Each paper is composed from scratch, according to your instructions. It is then checked by our plagiarism-detection software. There is no gap where plagiarism could squeeze in.

Read more

Free-revision policy

Thanks to our free revisions, there is no way for you to be unsatisfied. We will work on your paper until you are completely happy with the result.

Read more

Privacy policy

Your email is safe, as we store it according to international data protection rules. Your bank details are secure, as we use only reliable payment systems.

Read more

Fair-cooperation guarantee

By sending us your money, you buy the service we provide. Check out our terms and conditions if you prefer business talks to be laid out in official language.

Read more

Why is Purdue Papers the Most Helpful Essay Writing Service for You?

  1. Custom-written and plagiarism-free papers: Our authors create their work from scratch. Before presenting them to clients, we routinely verify them for signs of plagiarism. Our quality assurance group also double-checks and fixes any grammatical errors, assuring that all of our authors adhere to the same standards of writing.
  2. The significance of timely delivery cannot be overstated, and we consistently strive to meet or exceed our clients' deadlines. Regardless of the short time frame, you can count on our writers to get the job done. We always have a team of writers ready to go, even if the deadline is only six hours away.
  3. Customer Satisfaction: Our customer service representatives are the best in the business and have a wealth of knowledge in dealing with clients. All our customer service representatives are trained to listen and reply promptly until you are satisfied with their service. To ensure you're happy, our expert writers will strictly follow the criteria to generate a special report. Our customer service may be contacted by chat, email, or phone. In addition, we provide round-the-clock assistance to all of our clients.
  4. Confidentiality: Our systems are safe, and your information is always protected. We're constantly looking for new facts when it comes to finishing your work. We use a safe and secure payment channel. Since our ordering process is completely anonymous, you don't have to provide any credit card information to place a purchase with us.
  5. Highly Trained Authors: Our writers have received extensive training and are committed to delivering only the best papers. They are fluent in APA, MLA, HARVARD, IEEE, CHICAGO, and AMA referencing styles. To meet your expectations, our skilled writers always pay close attention to your instructions.
  6. Lowered prices: We have set prices that are already discounted. Our prices are the best and affordable for all our esteemed customers.

Let Professionals Take Care of your Academic Paper