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This dataset contains product prices from Amazon USA, with a focus on price prediction. With a good amount of data on what price points sell the most, you can train machine learning models to predict the optimal price for a product based on its features and product name.
If you find this dataset useful, make sure to show your appreciation by upvoting! ❤️✨
This dataset is a superset of my Amazon USA product price dataset. Another inspiration is this competition that awareded 100K Prize Money
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The dataset contains 2000 rows of house-related data, representing various features that could influence house prices. Below, we discuss key aspects of the dataset, which include its structure, the choice of features, and potential use cases for analysis.
The dataset is designed to capture essential attributes for predicting house prices, including:
Area: Square footage of the house, which is generally one of the most important predictors of price. Bedrooms & Bathrooms: The number of rooms in a house significantly affects its value. Homes with more rooms tend to be priced higher. Floors: The number of floors in a house could indicate a larger, more luxurious home, potentially raising its price. Year Built: The age of the house can affect its condition and value. Newly built houses are generally more expensive than older ones. Location: Houses in desirable locations such as downtown or urban areas tend to be priced higher than those in suburban or rural areas. Condition: The current condition of the house is critical, as well-maintained houses (in 'Excellent' or 'Good' condition) will attract higher prices compared to houses in 'Fair' or 'Poor' condition. Garage: Availability of a garage can increase the price due to added convenience and space. Price: The target variable, representing the sale price of the house, used to train machine learning models to predict house prices based on the other features.
Area Distribution: The area of the houses in the dataset ranges from 500 to 5000 square feet, which allows analysis across different types of homes, from smaller apartments to larger luxury houses. Bedrooms and Bathrooms: The number of bedrooms varies from 1 to 5, and bathrooms from 1 to 4. This variance enables analysis of homes with different sizes and layouts. Floors: Houses in the dataset have between 1 and 3 floors. This feature could be useful for identifying the influence of multi-level homes on house prices. Year Built: The dataset contains houses built from 1900 to 2023, giving a wide range of house ages to analyze the effects of new vs. older construction. Location: There is a mix of urban, suburban, downtown, and rural locations. Urban and downtown homes may command higher prices due to proximity to amenities. Condition: Houses are labeled as 'Excellent', 'Good', 'Fair', or 'Poor'. This feature helps model the price differences based on the current state of the house. Price Distribution: Prices range between $50,000 and $1,000,000, offering a broad spectrum of property values. This range makes the dataset appropriate for predicting a wide variety of housing prices, from affordable homes to luxury properties.
3. Correlation Between Features
A key area of interest is the relationship between various features and house price: Area and Price: Typically, a strong positive correlation is expected between the size of the house (Area) and its price. Larger homes are likely to be more expensive. Location and Price: Location is another major factor. Houses in urban or downtown areas may show a higher price on average compared to suburban and rural locations. Condition and Price: The condition of the house should show a positive correlation with price. Houses in better condition should be priced higher, as they require less maintenance and repair. Year Built and Price: Newer houses might command a higher price due to better construction standards, modern amenities, and less wear-and-tear, but some older homes in good condition may retain historical value. Garage and Price: A house with a garage may be more expensive than one without, as it provides extra storage or parking space.
The dataset is well-suited for various machine learning and data analysis applications, including:
House Price Prediction: Using regression techniques, this dataset can be used to build a model to predict house prices based on the available features. Feature Importance Analysis: By using techniques such as feature importance ranking, data scientists can determine which features (e.g., location, area, or condition) have the greatest impact on house prices. Clustering: Clustering techniques like k-means could help identify patterns in the data, such as grouping houses into segments based on their characteristics (e.g., luxury homes, affordable homes). Market Segmentation: The dataset can be used to perform segmentation by location, price range, or house type to analyze trends in specific sub-markets, like luxury vs. affordable housing. Time-Based Analysis: By studying how house prices vary with the year built or the age of the house, analysts can derive insights into the trends of older vs. newer homes.
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TwitterThis dataset contains the predicted prices of the asset ALL GOOD over the next 16 years. This data is calculated initially using a default 5 percent annual growth rate, and after page load, it features a sliding scale component where the user can then further adjust the growth rate to their own positive or negative projections. The maximum positive adjustable growth rate is 100 percent, and the minimum adjustable growth rate is -100 percent.
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TwitterThis dataset contains the predicted prices of the asset Looks Good over the next 16 years. This data is calculated initially using a default 5 percent annual growth rate, and after page load, it features a sliding scale component where the user can then further adjust the growth rate to their own positive or negative projections. The maximum positive adjustable growth rate is 100 percent, and the minimum adjustable growth rate is -100 percent.
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Gold fell to 4,199.97 USD/t.oz on December 2, 2025, down 0.75% from the previous day. Over the past month, Gold's price has risen 4.93%, and is up 58.92% compared to the same time last year, according to trading on a contract for difference (CFD) that tracks the benchmark market for this commodity. Gold - values, historical data, forecasts and news - updated on December of 2025.
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A simple yet challenging project, to predict the housing price based on certain factors like house area, bedrooms, furnished, nearness to mainroad, etc. The dataset is small yet, it's complexity arises due to the fact that it has strong multicollinearity. Can you overcome these obstacles & build a decent predictive model?
Harrison, D. and Rubinfeld, D.L. (1978) Hedonic prices and the demand for clean air. J. Environ. Economics and Management 5, 81–102. Belsley D.A., Kuh, E. and Welsch, R.E. (1980) Regression Diagnostics. Identifying Influential Data and Sources of Collinearity. New York: Wiley.
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This dataset contains product prices from Amazon Canada, with a focus on price prediction. With a good amount of data on what price points sell the most, you can train machine learning models to predict the optimal price for a product based on its features and product name.
If you find this dataset useful, make sure to show your appreciation by upvoting! ❤️✨
This dataset is a superset of my Amazon Canada product price dataset. Another inspiration is this competition that awareded 100K Prize Money
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This dataset contains product prices from Amazon UK, with a focus on price prediction. With a good amount of data on what price points sell the most, you can train machine learning models to predict the optimal price for a product based on its features and product name.
If you find this dataset useful, make sure to show your appreciation by upvoting! ❤️✨
This dataset is a superset of my Amazon UK product price dataset. Another inspiration is this competition that awareded 100K Prize Money
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Task Description: Real Estate Price Prediction
This task involves predicting the price of real estate properties based on various features that influence the value of a property. The dataset contains several attributes of real estate properties such as square footage, the number of bedrooms, bathrooms, floors, the year the property was built, whether the property has a garden or pool, the size of the garage, the location score, and the distance from the city center.
The goal is to build a regression model that can predict the Price of a property based on the provided features.
Dataset Columns:
ID: A unique identifier for each property.
Square_Feet: The area of the property in square meters.
Num_Bedrooms: The number of bedrooms in the property.
Num_Bathrooms: The number of bathrooms in the property.
Num_Floors: The number of floors in the property.
Year_Built: The year the property was built.
Has_Garden: Indicates whether the property has a garden (1 for yes, 0 for no).
Has_Pool: Indicates whether the property has a pool (1 for yes, 0 for no).
Garage_Size: The size of the garage in square meters.
Location_Score: A score from 0 to 10 indicating the quality of the neighborhood (higher scores indicate better neighborhoods).
Distance_to_Center: The distance from the property to the city center in kilometers.
Price: The target variable that represents the price of the property. This is the value we aim to predict.
Objective: The goal of this task is to develop a regression model that predicts the Price of a real estate property using the other features as inputs. The model should be able to learn the relationship between these features and the price, providing an accurate prediction for unseen data.
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TwitterBased on professional technical analysis and AI models, deliver precise price‑prediction data for Good Person Coin on 2025-11-11. Includes multi‑scenario analysis (bullish, baseline, bearish), risk assessment, technical‑indicator insights and market‑trend forecasts to help investors make informed trading decisions and craft sound investment strategies.
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Overview: This dataset was collected and curated to support research on predicting real estate prices using machine learning algorithms, specifically Support Vector Regression (SVR) and Gradient Boosting Machine (GBM). The dataset includes comprehensive information on residential properties, enabling the development and evaluation of predictive models for accurate and transparent real estate appraisals.Data Source: The data was sourced from Department of Lands and Survey real estate listings.Features: The dataset contains the following key attributes for each property:Area (in square meters): The total living area of the property.Floor Number: The floor on which the property is located.Location: Geographic coordinates or city/region where the property is situated.Type of Apartment: The classification of the property, such as studio, one-bedroom, two-bedroom, etc.Number of Bathrooms: The total number of bathrooms in the property.Number of Bedrooms: The total number of bedrooms in the property.Property Age (in years): The number of years since the property was constructed.Property Condition: A categorical variable indicating the condition of the property (e.g., new, good, fair, needs renovation).Proximity to Amenities: The distance to nearby amenities such as schools, hospitals, shopping centers, and public transportation.Market Price (target variable): The actual sale price or listed price of the property.Data Preprocessing:Normalization: Numeric features such as area and proximity to amenities were normalized to ensure consistency and improve model performance.Categorical Encoding: Categorical features like property condition and type of apartment were encoded using one-hot encoding or label encoding, depending on the specific model requirements.Missing Values: Missing data points were handled using appropriate imputation techniques or by excluding records with significant missing information.Usage: This dataset was utilized to train and test machine learning models, aiming to predict the market price of residential properties based on the provided attributes. The models developed using this dataset demonstrated improved accuracy and transparency over traditional appraisal methods.Dataset Availability: The dataset is available for public use under the [CC BY 4.0]. Users are encouraged to cite the related publication when using the data in their research or applications.Citation: If you use this dataset in your research, please cite the following publication:[Real Estate Decision-Making: Precision in Price Prediction through Advanced Machine Learning Algorithms].
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TwitterThis dataset contains the predicted prices of the asset Banana For Good over the next 16 years. This data is calculated initially using a default 5 percent annual growth rate, and after page load, it features a sliding scale component where the user can then further adjust the growth rate to their own positive or negative projections. The maximum positive adjustable growth rate is 100 percent, and the minimum adjustable growth rate is -100 percent.
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Graph and download economic data for All-Transactions House Price Index for Great Falls, MT (MSA) (ATNHPIUS24500Q) from Q4 1992 to Q3 2025 about Great Falls, MT, appraisers, HPI, housing, price index, indexes, price, and USA.
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United States CSI: Large HH Gds Buying Conditions: Good Time: Prices Will Increase data was reported at 15.000 % in May 2018. This records a decrease from the previous number of 18.000 % for Apr 2018. United States CSI: Large HH Gds Buying Conditions: Good Time: Prices Will Increase data is updated monthly, averaging 11.000 % from Jan 1978 (Median) to May 2018, with 485 observations. The data reached an all-time high of 53.000 % in Apr 1979 and a record low of 1.000 % in Feb 2009. United States CSI: Large HH Gds Buying Conditions: Good Time: Prices Will Increase data remains active status in CEIC and is reported by University of Michigan. The data is categorized under Global Database’s USA – Table US.H032: Consumer Sentiment Index: Household Durables Buying Conditions. The question was: About the big things people buy for their homes - such as furniture, a refrigerator, stove, television, etc. Generally speaking, do you think now is a good or a bad time for people to buy major household items? Responses to the query 'Why do you say so?'
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United States CSI: Home Buying Conditions: Good Time: Prices Will Increase data was reported at 17.000 % in May 2018. This records an increase from the previous number of 15.000 % for Apr 2018. United States CSI: Home Buying Conditions: Good Time: Prices Will Increase data is updated monthly, averaging 7.000 % from Feb 1978 (Median) to May 2018, with 467 observations. The data reached an all-time high of 37.000 % in May 1978 and a record low of 0.000 % in Apr 2009. United States CSI: Home Buying Conditions: Good Time: Prices Will Increase data remains active status in CEIC and is reported by University of Michigan. The data is categorized under Global Database’s USA – Table US.H036: Consumer Sentiment Index: Home Buying and Selling Conditions. The question was: Generally speaking, do you think now is a good time or a bad time to buy a house? Responses to the query 'Why do you say so?'
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TwitterThe price of gold per troy ounce increased considerably between 1990 and 2025, despite some fluctuations. A troy ounce is the international common unit of weight used for precious metals and is approximately **** grams. At the end of 2024, a troy ounce of gold cost ******* U.S. dollars. As of * June 2025, it increased considerably to ******** U.S. dollars. Price of – additional information In 2000, the price of gold was at its lowest since 1990, with a troy ounce of gold costing ***** U.S. dollars in that year. Since then, gold prices have been rising and after the economic crisis of 2008, the price of gold rose at higher rates than ever before as the market began to see gold as an increasingly good investment. History has shown, gold is seen as a good investment in times of uncertainty because it can or is thought to function as a good store of value against a declining currency as well as providing protection against inflation. However, unlike other commodities, once gold is mined it does not get used up like other commodities (for example, such as gasoline). So while gold may be a good investment at times, the supply demand argument does not apply to gold. Nonetheless, the demand for gold has been mostly consistent.
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China Producer Price Index: Consumer Good: Clothing data was reported at 99.900 Prev Year=100 in 2024. This records a decrease from the previous number of 101.100 Prev Year=100 for 2023. China Producer Price Index: Consumer Good: Clothing data is updated yearly, averaging 101.100 Prev Year=100 from Dec 1986 (Median) to 2024, with 39 observations. The data reached an all-time high of 136.400 Prev Year=100 in 1994 and a record low of 96.100 Prev Year=100 in 1999. China Producer Price Index: Consumer Good: Clothing data remains active status in CEIC and is reported by National Bureau of Statistics. The data is categorized under China Premium Database’s Inflation – Table CN.IE: Producer Price Index.
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Graph and download economic data for Housing Inventory: Median Listing Price in Great Falls, MT (CBSA) (MEDLISPRI24500) from Jul 2016 to Oct 2025 about Great Falls, MT, listing, median, price, and USA.
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Learn about the factors that can influence ground beef prices and tips for finding a good deal, including buying in bulk, shopping for sales, and exploring alternative sources.
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This dataset contains Global Food Prices data from the World Food Programme covering foods such as maize, rice, beans, fish, and sugar for 76 countries and some 1,500 markets. The data goes back as far as 1992 for a few countries, although many countries started reporting from 2003 or thereafter.
The CSV files contains more than 1.048M rows. Data includes information on country, market, price of good in local currency, quantity of good, and month recorded.
This data is compiled by the World Food Program and distributed by HDX.
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This dataset contains product prices from Amazon USA, with a focus on price prediction. With a good amount of data on what price points sell the most, you can train machine learning models to predict the optimal price for a product based on its features and product name.
If you find this dataset useful, make sure to show your appreciation by upvoting! ❤️✨
This dataset is a superset of my Amazon USA product price dataset. Another inspiration is this competition that awareded 100K Prize Money