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OTT Platform Data Analysis: Helps in Choosing an OTT Service

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3i Data Scraping
OTT Platform Data Analysis: Helps in Choosing an OTT Service

In 2019, the OTT marketplace was estimated at $85.16 Billion and this is anticipated to reach $194.20 Billion by the year 2025. Under Coronavirus, a lot of countries have announced social distancing measures, which forced theaters in limiting total audiences or shut down and it encouraged people in staying at home, quickening the rise in OTT platform subscriptions. So, we thought that here is the right time of analyzing various OTT platforms as well as offer useful data for people that can’t decide which platforms fit those the best.


Mainly, three datasets groups were utilized for this study with the content listing for Netflix, Amazon Prime, as well as Disney+; IMDb genre classification and ratings; MovieLens ratings as well as genome tags. Content listing for every platform was used as a base for analysis. Although, as they all were collected from various resources, they were not reliable in the time of last updates and column types. So, for easing the procedure of analysis as well as making the results more dependable, we need to clean data in the identical form as well as combine them using other datasets, which contained reliable information about ratings, age limit, and genre.

Amongst them were MovieLens and IMDb datasets. Though every platform data has information about IMDb and genres ratings, they got labeled as per different categorizations as well as updated at various times, needing the usage of different data for ratings and genres. On the top, we have utilized MovieLens data for strengthening our analysis. As we did not get pre-existing studies for proving our findings, we have decided to work on a similar analysis of two various data. MovieLens had its ratings and tag data that made it an appropriate comparison for IMDb ratings and genres. We have assumed that having similar results from two resources would support the authority of the analysis done.

Netflix


The content dataset of Netflix includes both movies and TV shows, which are accessible on Netflix since 2019, having 7788 rows comprising the header as well as 12 columns. These columns include title, show_id, type, cast, country, director, release_year, rating, duration, date_added, listed_in, as well as description, however, only title, type, release_year, ratings, and duration got used.

The dataset of Netflix original movies has 525 rows comprising the header as well as 48 columns, but we have only utilized title as well as release date in our study.

Amazon Prime Video


The dataset of Amazon Prime Video has a total of 8128 rows as well as 7 columns. These columns consist of title, IMDb ratings, language, run time, release year, maturity ratings, and plot. Finally, we have only utilized 4 out of 7 columns.

To differentiate original movies from datasets, we have extracted a listing of original movies taken from Wikipedia. It has 52 rows as well as 3 columns including title, release date, as well as notes.

Disney+


The Disney+ dataset has data on TV series and films, which are inappropriate to the study. This has a total of 19 columns and 992 rows including title, type, director, plot, as well as genre, however, only title, type, imdb_id, released_at, as well as rated were utilized for our objective.

We have also utilized a listing of original films extracted from Wikipedia. The data had 56 rows as well as a title, release date, genre, as well as the runtime for columns. Although the majority of them are for release after 2020 they might not get utilized in this study.

IMDb


From IMDb, we have utilized datasets like title.basics.tsv.gz as well as title.ratings.tsv.gz.

Title.basics.tsv.gz restricted columns like title, IMDb ID, start year, genre, runtime, etc., however, we have only utilized title, IMDb ID, as well as a genre from data. Titles worked as the key for merging platform data as well as IMDb. We have kept IMDb ID as when utilized as the key, it has made merging rating data with platform data easy.

Title.ratings.tsv.gz was utilized for retrieving the rating data. It had confined IMDb ID, average ratings, and other votes from where we have utilized the initial two columns.

MovieLens


MovieLens is the website owned by GroupLens, which independently collects ratings as well as tag data from the users. Luckily, link.csv contained data, which links IMDb ID with MovieLens ID that making it suitable for us for combining MovieLens data with the existing data frame. Not like IMDb data that already aggregated the average ratings as well as classified genres for every film, MovieLens data had separate tags and ratings, which had to be collected by us.

In MovieLens, you can have a total of 1128 tags as well as every film has a score range from 0-1 for every tag. The nearer it has to 1, the movie will be more relevant to tag. As there are many tag and movie pairs, we have only cleaned the pairs, which scored more than 0.8, and decided to use trial & error.


The experimentation consisted of mostly two steps: pre-processing as well as analysis. Pre-processing was a vital step for this project as all the data were from various sources. There were problems like disambiguating movies having similar titles as well as combining various age rating systems, which had to be overcome to start the analysis.

After pre-processing the resource datasets, we have explored how various platforms concentrate on content targeted toward particular audiences differing in age as well as genre preferences.

Genome Analysis of MovieLens Tag



Netflix

The analysis of a MovieLens dataset of Netflix (given in Figures 4 & 5) showed co-relatable findings of IMDb genre analysis. Different tags like action, drama, and comedy were incorporated in one of the higher occurred tags for original as well as non-original movies. Different properties, which were different compared to new platforms like “good soundtrack” or “visually-appealing” were also got available. The tags having higher ratings for original as well as non-original movies were diverse with “olympics”, “conspiracy”, as well as “russia” as the top three for the original movies as well as “east germany”, “berlin”, “entirely dialogue” like top three for the non-original movies. Generally, the results about highly-rated tags as well as tag amounts for both the original as well as non-original movies gave extra insights into the types of content that Netflix had.



Amazon Prime

The dataset of Amazon Prime confined a total of 52 original movies. The data of MovieLens only had around 6 Amazon original movies. Though limited by lesser original movies, the analytics has discovered that Amazon Prime original movies had tags associated with the genre “comedy” and “drama”. The maximum average ratings also displayed a comparable trend. The Amazon Prime non-original movies had tags associated with “action” first and “comedy” second. The maximum average rated tags were associated with themes, which action movies might have like “compassionate”, “freedom”, as well as “scifi cult”. However, some were unrelated to trends we have discovered right through the research. Usually, the MovieLens analytics gave similar results to what the genre analytics had discovered.


Disney+

For Disney+, merely non-original films got analyzed as there were merely 3 original films, which were got released till 2019 as well as accessible in MovieLens. Different tags, which appeared maximum for Disney+ films include “animation”, “family”, as well as “disney animated feature”. In terms of ratings per tag, the topics, which are generally associated with animation like “pixar animation”, “superheros”, as well as “toys” recorded the maximum ratings. Though many films were missing in MovieLens data, still the key findings were constant with those from IMDb data.


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