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# Copyright 2023 by Jan Philip Wahle, https://jpwahle.com/
# All rights reserved.

import os

import numpy as np
import pandas as pd
import seaborn as sns
from matplotlib import pyplot as plt
from scipy.stats import gaussian_kde

dirname = os.path.dirname(__file__)

# Load the csv file into a pandas DataFrame
papers_df = pd.read_csv(
    os.path.join(dirname, "data/nlp_papers_field_diversity.csv")
)

# Compute the mean CFDI
mean_cfdi = papers_df["incoming_diversity"].mean()

# Compute the mean CADI
mean_citation_ages = []

# Commenting out the old code
#|# Open the file and read the content in a list
#|with open(
#|    os.path.join(dirname, "data/nlp_papers_citation_age.txt"),
#|    "r",
#|    encoding="utf-8",
#|) as filehandle:
#|    for line in filehandle:
#|        temp = float(line[:-1])
#|        mean_citation_ages.append(temp)


def generate_cfdi_plot(input_cfdi, compute_type="paper"):
    """
    Function to generate a plot for CFDI
    """
    # Using kdeplot to fill the distribution curve
    sns.set(font_scale=1.3, style="whitegrid")

    data = papers_df[papers_df["incoming_diversity"] > 0]["incoming_diversity"]
    kde = gaussian_kde(data)
    x_vals = np.linspace(data.min(), data.max(), 1000)
    y_vals = kde.evaluate(x_vals)

    fig, ax = plt.subplots()  # create a new figure and axis

    ax.fill_between(x_vals, y_vals, color="skyblue", alpha=0.3)
    ax.plot(x_vals, y_vals, color="skyblue", linewidth=2, label="Distribution")

    interpolated_y_cfdi = np.interp(input_cfdi, x_vals, y_vals)
    ax.scatter(
        input_cfdi,
        interpolated_y_cfdi,
        c="r",
        marker="*",
        linewidths=2,
        zorder=2,
        s=32,
    )
    ax.vlines(
        input_cfdi,
        0,
        interpolated_y_cfdi,
        color="tomato",
        ls="--",
        lw=1.5,
    )

    epsilon = 0.005
    # Compute the average and plot it as a light grey vertical line
    mean_val = np.mean(data)
    # Interpolate the y value for the mean
    interpolated_y_mean = np.interp(mean_val, x_vals, y_vals)

    ax.vlines(mean_val, 0, interpolated_y_mean, color="grey", ls="--", lw=1.5)
    ax.text(
        mean_val + epsilon,
        interpolated_y_mean + epsilon,
        "Avg.",
        {"color": "grey", "fontsize": 13},
        ha="left",  # Horizontal alignment
    )
    ax.text(
        input_cfdi + epsilon,
        interpolated_y_cfdi + epsilon,
        f"This {compute_type}",
        {"color": "#DC143C", "fontsize": 13},
        ha="left",  # Horizontal alignment
    )

    ax.set_xlabel("Citation Field Diversity Index (CFDI)", fontsize=15)
    ax.set_ylabel("Density", fontsize=15)
    sns.despine(left=True, bottom=True, right=True, top=True)

    return fig


def generate_maoc_plot(input_maoc, compute_type="paper"):
    """
    Function to generate a plot for MAOC
    """
    # Using kdeplot to fill the distribution curve
    sns.set(font_scale=1.3, style="whitegrid")

    data = pd.DataFrame(mean_citation_ages)[0]
    kde = gaussian_kde(data)
    x_vals = np.linspace(data.min(), data.max(), 1000)
    y_vals = kde.evaluate(x_vals)

    fig, ax = plt.subplots()  # create a new figure and axis
    ax.fill_between(x_vals, y_vals, color="skyblue", alpha=0.3)
    ax.plot(x_vals, y_vals, color="skyblue", linewidth=2, label="Distribution")

    interpolated_y_cfdi = np.interp(input_maoc, x_vals, y_vals)
    ax.scatter(
        input_maoc,
        interpolated_y_cfdi,
        c="r",
        marker="*",
        linewidths=2,
        zorder=2,
        s=32,
    )
    ax.vlines(
        input_maoc,
        0,
        interpolated_y_cfdi,
        color="tomato",
        ls="--",
        lw=1.5,
    )

    epsilon = 0.005
    # Compute the average and plot it as a light grey vertical line
    mean_val = np.mean(data)
    # Interpolate the y value for the mean
    interpolated_y_mean = np.interp(mean_val, x_vals, y_vals)

    ax.vlines(mean_val, 0, interpolated_y_mean, color="grey", ls="--", lw=1.5)
    ax.text(
        mean_val + epsilon,
        interpolated_y_mean + epsilon,
        "Avg.",
        {"color": "grey", "fontsize": 13},
        ha="left",  # Horizontal alignment
    )
    ax.text(
        input_maoc + epsilon,
        interpolated_y_cfdi + epsilon,
        f"This {compute_type}",
        {"color": "#DC143C", "fontsize": 13},
        ha="left",  # Horizontal alignment
    )

    ax.set_xlabel("Mean Age of Citation (mAoC)", fontsize=15)
    ax.set_ylabel("Density", fontsize=15)
    sns.despine(left=True, bottom=True, right=True, top=True)

    return fig