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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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/** * k-nearest neighbor */ export class KNN extends KNNBase { /** * Add a data. * @param {number[]} point Training data * @param {*} category Target value */ add(point: number[], category: any): void; /** * Add datas. * @param {Array<Array<number>>} datas Training data * @param {*[]} targets Target values */ fit(datas: Array<Array<number>>, targets: any[]): void; /** * Returns predicted categories. * @param {Array<Array<number>>} datas Sample data * @returns {*[]} Predicted values */ predict(datas: Array<Array<number>>): any[]; } /** * k-nearest neighbor regression */ export class KNNRegression extends KNNBase { /** * Add a data. * @param {number[]} point Training data * @param {number} category Target value */ add(point: number[], category: number): void; /** * Add datas. * @param {Array<Array<number>>} datas Training data * @param {number[]} targets Target values */ fit(datas: Array<Array<number>>, targets: number[]): void; /** * Returns predicted values. * @param {Array<Array<number>>} datas Sample data * @returns {number[]} Predicted values */ predict(datas: Array<Array<number>>): number[]; } /** * k-nearest neighbor anomaly detection */ export class KNNAnomaly extends KNNBase { /** * Add a data. * @param {number[]} point Training data */ add(point: number[]): void; /** * Add datas. * @param {Array<Array<number>>} datas Training data */ fit(datas: Array<Array<number>>): void; /** * Returns anomaly degrees. * @param {Array<Array<number>>} datas Sample data * @returns {number[]} Predicted values */ predict(datas: Array<Array<number>>): number[]; } /** * k-nearest neighbor density estimation */ export class KNNDensityEstimation extends KNNBase { /** * Add a data. * @param {number[]} point Training data */ add(point: number[]): void; /** * Add datas. * @param {Array<Array<number>>} datas Training data */ fit(datas: Array<Array<number>>): void; _logGamma(z: any): number; /** * Returns predicted values. * @param {Array<Array<number>>} datas Sample data * @returns {number[]} Predicted values */ predict(datas: Array<Array<number>>): number[]; } /** * Semi-supervised k-nearest neighbor */ export class SemiSupervisedKNN extends KNNBase { _orgk: number; /** * Add a data. * @param {number[]} point Training data * @param {* | null} category Target value */ add(point: number[], category: any | null): void; /** * Add datas. * @param {Array<Array<number>>} datas Training data * @param {(* | null)[]} targets Target values */ fit(datas: Array<Array<number>>, targets: (any | null)[]): void; /** * Returns predicted values. * @returns {*[]} Predicted values */ predict(): any[]; } /** * Bsae class for k-nearest neighbor models */ declare class KNNBase { /** * @param {number} [k] Number of neighborhoods * @param {'euclid' | 'manhattan' | 'chebyshev' | 'minkowski' | function (number[], number[]): number} [metric] Metric name */ constructor(k?: number, metric?: "euclid" | "manhattan" | "chebyshev" | "minkowski" | ((arg0: number[], arg1: number[]) => number)); _p: any[]; _c: any[]; _k: number; _metric: "euclid" | "manhattan" | "chebyshev" | "minkowski" | ((arg0: number[], arg1: number[]) => number); _d: (a: any, b: any) => any; _near_points(data: any): any[]; /** * Add a data. * @param {number[]} point Training data * @param {*} [category] Target value */ _add(point: number[], category?: any): void; } export {};