# Computer science final | data science | Morgan State University

Question 1 (80 pts)

Sentiment Analysis helps data scientists to analyze any kind of data i.e., Business, Politics, Social Media, etc., For example, the IMDb dataset “movie_data.csv” file contains 25,000 highly polar ‘positive’ (12500) and ‘negative’ (12500) IMDB movie reviews (label negative review as ‘0’ and positive review as ‘1’).

Similarly, “amazon_data.txt” and “yelp_data.txt” contain 1000 labeled negative review as ‘0’ and positive review as ‘1’

For further help, check the notebook sentiment_analysis.ipynb in Canvas and also explore the link: https://medium.com/@vasista/sentiment-analysis-using-svm338d418e3ff1

a) Read all the above data files (.csv and .txt) in python Pandas DataFrame. For each dataset, make 70% as training and 30% as test sets.

b) By using both CountVectorizer and TfidfVectorizer separately of the sklearn library , perform the Logistic regression classification in the IMDb dataset and evaluate the accuracies in the test set.

c) Classify the Amazon dataset using Logistic Regression and Neural Network (two hidden layers) and compare the performances and show the confusion matrices.

d) Generate classification model for the Yelp dataset with K-NN algorithms. Fit and test the model for different values for K (from 1 to 5) using a for loop and record and plot the KNN’s testing accuracy in a variable (scores).

e) Generate prediction for the following reviews based Logistic regression classifier in Amazon dataset: Review1 = “SUPERB, I AM IN LOVE IN THIS PHONE”  Review 2 = “Do not purchase this product.

My cell phone blast when I switched  the charger”

Question 2 (60 pts)

The 20 Newsgroups data set is a collection of approximately 20,000 newsgroup documents, partitioned (nearly) evenly across 20 different newsgroups. This data set is in-built in scikit, so you don’t need to download it explicitly.You can check the code here:

https://towardsdatascience.com/machine-learning-nlp-text-classification-using-scikit-learn-python-and-nltk-c52b92a7c73a

to load the data set directly in notebook (this might take few minutes, so patience). For example,

from sklearn.datasets import fetch_20newsgroups

twenty_train = fetch_20newsgroups(subset=”train”, shuffle=True)

a)By using bothCountVectorizer and TfidfVectorizer separately of the sklearn library, perform the Logistic regression classificationon the training set and show the confusing matrix and accuracy by predicting the  class labels in the test set.

b)Perform a Logistic  Regression classification and show the accuracy of the test set

c)Perform a K-means Clustering in the training set with K =20

d)Plot the accuracy (Elbow method) of different cluster sizes (5, 10, 15, 20, 25, 30)and determine  the best cluster size.

Question 3 (60 pts)

The Medical dataset “image_caption.txt”contains captions for 1000 images (ImageID).Let’s build a small search engine (you may explore to get some help: https://towardsdatascience.com/create-a-simple-search-engine-using-python-412587619ff5and https://www.machinelearningplus.com/nlp/cosine-similarity/)  by performing the following:

a)Read all the data files in python Pandas DataFrame.

b)Perform the necessary pre-processing task (e.g.,punctuation, numbers,stop word removal, etc.)

c)Create Term-Document Matrix with TF-IDF weighting

d)Calculate the similarity using cosine similarity and show the top ranked ten (10) images Based on the following query

“CT images of chest showing ground glass opacity”

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