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@ai-on-browser/data-analysis-models

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Data analysis model package without any dependencies

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const kernels = { gaussian: ({ s = 1 }) => (a, b) => Math.exp(-(a.reduce((s, v, i) => s + (v - b[i]) ** 2, 0) ** 2) / s ** 2), polynomial: ({ d = 2 }) => (a, b) => (1 + a.reduce((s, v, i) => s + v * b[i])) ** d, } /** * Kernelized perceptron */ export default class KernelizedPerceptron { // Online Learning: A Comprehensive Survey // https://arxiv.org/abs/1802.02871 // Large Margin Classification Using the Perceptron Algorithm // https://cseweb.ucsd.edu/~yfreund/papers/LargeMarginsUsingPerceptron.pdf /** * @param {number} [rate] Learning rate * @param {'gaussian' | 'polynomial' | { name: 'gaussian', s?: number } | { name: 'polynomial', d?: number } | function (number[], number[]): number} [kernel] Kernel name */ constructor(rate = 1, kernel = 'gaussian') { this._r = rate if (typeof kernel === 'function') { this._kernel = kernel } else { if (typeof kernel === 'string') { kernel = { name: kernel } } this._kernel = kernels[kernel.name](kernel) } this._i = [] } /** * Fit model. * @param {Array<Array<number>>} x Training data * @param {Array<1 | -1>} y Target values */ fit(x, y) { for (let i = 0; i < x.length; i++) { if (this._i.length === 0) { this._i.push({ x: x[i], y: y[i] }) continue } let s = 0 for (let k = 0; k < this._i.length; k++) { const j = this._i[k] s += this._r * j.y * this._kernel(x[i], j.x) } const yh = s < 0 ? -1 : 1 if (yh !== y[i]) { this._i.push({ x: x[i], y: y[i] }) } } } /** * Returns predicted values. * @param {Array<Array<number>>} data Sample data * @returns {(1 | -1)[]} Predicted values */ predict(data) { const pred = [] for (let i = 0; i < data.length; i++) { let s = 0 for (let k = 0; k < this._i.length; k++) { const j = this._i[k] s += this._r * j.y * this._kernel(data[i], j.x) } pred[i] = s < 0 ? -1 : 1 } return pred } }