Abalone
Tabular Classification Available

Abalone

Donated Nov 30, 1995 Biology Creative Commons Attribution 4.0 International

Abstract

Predict the age of abalone from physical measurements

Instances
4,177
Features
8
Data Type
Tabular
Missing Values
No

Purpose

Additional Information Predicting the age of abalone from physical measurements. The age of abalone is determined by cutting the shell through the cone, staining it, and counting the number of rings through a microscope -- a boring and time-consuming task. Other measurements, which are easier to obtain, are used to predict the age. Further information, such as weather patterns and location (hence food availability) may be required to solve the problem. From the original data examples with missing values were removed (the majority having the predicted value missing), and the ranges of the continuous values have been scaled for use with an ANN (by dividing by 200).

Name Role Type Description Missing
Sex Feature Categorical M, F, and I (infant) No
Length Feature Real Longest shell measurement No
Diameter Feature Real perpendicular to length No
Height Feature Real with meat in shell No
Whole Weight Feature Real whole abalone No
Shucked Weight Feature Real weight of meat No
Viscera Weight Feature Real gut weight (after bleeding) No
Shell Weight Feature Real after being dried No
Rings Target Integer +1.5 gives the age in years No

Abalone.data

CSV 187.40 KB • Data

abalone.names

MD 4.20 KB • Documentation

Index

INDEX 0.11 KB • Documentation

Papers Citing this Dataset

56 papers found

Sparse Algorithm for Robust LSSVM in Primal Space

By Li Chen, Shuisheng Zhou

ArXiv 2017 84

Aggregation of Classifiers: A Justifiable Information Granularity Approach

By Tien Nguyen, Xuan Pham, Alan Liew, Witold Pedrycz

ArXiv 2017 84

Highly efficient nonlinear regression for big data with lexicographical splitting

By Mohammadreza Mohaghegh Neyshabouri, Oguzhan Demir, Ibrahim Delibalta, Suleyman Kozat

Signal, Image and Video Processing 2017 84

Analyzing the Robustness of Nearest Neighbors to Adversarial Examples

By Yizhen Wang, Somesh Jha, Kamalika Chaudhuri

International Conference on Machine Learning (ICML) 2018, Page 5133--5142 2017 84

Unsupervised Ensemble Regression

By Omer Dror, Boaz Nadler, Erhan Bilal, Yuval Kluger

ArXiv 2017 84
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