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+date = 2020-07-20
+title = "Data Exploration: Video Games Sales"
+description = ""
+draft = false
++++
+
+# Background Information
+
+This dataset (obtained from
+[Kaggle](https://www.kaggle.com/gregorut/videogamesales/data)) contains
+a list of video games with sales greater than 100,000 copies. It was
+generated by a scrape of vgchartz.com.
+
+Fields include:
+
+- Rank: Ranking of overall sales
+- Name: The game name
+- Platform: Platform of the game release (i.e. PC,PS4, etc.)
+- Year: Year of the game\'s release
+- Genre: Genre of the game
+- Publisher: Publisher of the game
+- NA~Sales~: Sales in North America (in millions)
+- EU~Sales~: Sales in Europe (in millions)
+- JP~Sales~: Sales in Japan (in millions)
+- Other~Sales~: Sales in the rest of the world (in millions)
+- Global~Sales~: Total worldwide sales.
+
+There are 16,598 records. 2 records were dropped due to incomplete
+information.
+
+# Import the Data
+
+``` python
+# Import the Python libraries we will be using
+import pandas as pd
+import numpy as np
+import seaborn as sns; sns.set()
+import matplotlib.pyplot as plt
+
+# Load the file using the path to the downloaded file
+file = r'video_game_sales.csv'
+df = pd.read_csv(file)
+df
+```
+
+![Dataframe
+Results](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/01_dataframe-min.png)
+
+# Explore the Data
+
+``` python
+# With the description function, we can see the basic stats. For example, we can
+# also see that the 'Year' column has some incomplete values.
+df.describe()
+```
+
+![df.describe()](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/02_describe-min.png)
+
+``` python
+# This function shows the rows and columns of NaN values. For example, df[179,3] = nan
+np.where(pd.isnull(df))
+
+(array([179, ..., 16553], dtype=int64),
+ array([3, ..., 5], dtype=int64))
+```
+
+# Visualize the Data
+
+``` python
+# This function plots the global sales by platform
+sns.catplot(x='Platform', y='Global_Sales', data=df, jitter=False).set_xticklabels(rotation=90)
+```
+
+![Plot of Global Sales by
+Platform](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/03_plot-min.png)
+
+``` python
+# This function plots the global sales by genre
+sns.catplot(x='Genre', y='Global_Sales', data=df, jitter=False).set_xticklabels(rotation=45)
+```
+
+![Plot of Global Sales by
+Genre](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/04_plot-min.png)
+
+``` python
+# This function plots the global sales by year
+sns.lmplot(x='Year', y='Global_Sales', data=df).set_xticklabels(rotation=45)
+```
+
+![Plot of Global Sales by
+Year](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/05_plot-min.png)
+
+``` python
+# This function plots four different lines to show sales from different regions.
+# The global sales plot line is commented-out, but can be included for comparison
+df2 = df.groupby('Year').sum()
+years = range(1980,2019)
+
+a = df2['NA_Sales']
+b = df2['EU_Sales']
+c = df2['JP_Sales']
+d = df2['Other_Sales']
+# e = df2['Global_Sales']
+
+fig, ax = plt.subplots(figsize=(12,12))
+ax.set_ylabel('Region Sales (in Millions)')
+ax.set_xlabel('Year')
+
+ax.plot(years, a, label='NA_Sales')
+ax.plot(years, b, label='EU_Sales')
+ax.plot(years, c, label='JP_Sales')
+ax.plot(years, d, label='Other_Sales')
+# ax.plot(years, e, label='Global_Sales')
+
+ax.legend()
+plt.show()
+```
+
+![Plot of Regional Sales by
+Year](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/06_plot-min.png)
+
+## Investigate Outliers
+
+``` python
+# Find the game with the highest sales in North America
+df.loc[df['NA_Sales'].idxmax()]
+
+Rank 1
+Name Wii Sports
+Platform Wii
+Year 2006
+Genre Sports
+Publisher Nintendo
+NA_Sales 41.49
+EU_Sales 29.02
+JP_Sales 3.77
+Other_Sales 8.46
+Global_Sales 82.74
+Name: 0, dtype: object
+
+# Explore statistics in the year 2006 (highest selling year)
+df3 = df[(df['Year'] == 2006)]
+df3.describe()
+```
+
+![Descriptive Statistics of 2006
+Sales](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/07_2006_stats-min.png)
+
+``` python
+# Plot the results of the previous dataframe (games from 2006) - we can see the year's results were largely carried by Wii Sports
+sns.catplot(x="Genre", y="Global_Sales", data=df3, jitter=False).set_xticklabels(rotation=45)
+```
+
+![Plot of 2006
+Sales](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/08_plot-min.png)
+
+``` python
+# We can see 4 outliers in the graph above, so let's get the top 5 games from that dataframe
+# The results below show that Nintendo had all top 5 games (3 on the Wii and 2 on the DS)
+df3.sort_values(by=['Global_Sales'], ascending=False).head(5)
+```
+
+![Outliers of 2006
+Sales](https://img.cleberg.net/blog/20200720-data-exploration-video-game-sales/09_outliers-min.png)
+
+# Discussion
+
+The purpose of exploring datasets is to ask questions, answer questions,
+and discover intelligence that can be used to inform decision-making.
+So, what have we found in this dataset?
+
+Today we simply explored a publicly-available dataset to see what kind
+of information it contained. During that exploration, we found that
+video game sales peaked in 2006. That peak was largely due to Nintendo,
+who sold the top 5 games in 2006 and has a number of games in the top-10
+list for the years 1980-2020. Additionally, the top four platforms by
+global sales (Wii, NES, GB, DS) are owned by Nintendo.
+
+We didn\'t explore everything this dataset has to offer, but we can tell
+from a brief analysis that Nintendo seems to rule sales in the video
+gaming world. Further analysis could provide insight into which genres,
+regions, publishers, or world events are correlated with sales.