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'use strict';
import { create } from '../util.js';
const DEFAULT_WEIGHT_MAX = 4;
// prototype for network objects
const network_proto = {
connect: function(source, sink, weight) {
return network_connect(this, source, sink, weight);
},
compute: function(inputs, state) {
return network_compute(this, inputs, state);
},
};
// create a new network
export function network(input_count, internal_count, output_count, weight_max = 4) {
const count = input_count + internal_count + output_count;
const n = create({
input_count,
output_count,
adjacency: new Array(count).fill([]),
weight: [],
}, network_proto);
return n;
}
// check index is an input
function is_input(n, index) {
return index < n.input_count;
}
// check if index is an output
function is_output(n, index) {
return index >= (n.adjacency.length - n.output_count);
}
// check if index is a hidden neuron
function is_hidden(n, index) {
return (!is_input(n, index)) && (!is_output(n, index));
}
// returns a new network with an edge between the given nodes
// with the given weight
export function network_connect(n, source, sink, weight) {
if (is_input(n, sink)) {
// inputs cannot be sinks
throw new Error(`attempt to use input as sink (${source} -> ${sink})`);
}
if (is_output(n, source)) {
// outputs cannot be sources
throw new Error(`attempt to use output as source (${source} -> ${sink})`);
}
return create({
...n,
adjacency: n.adjacency.map((row, i) => {
if (i === source && i === sink) {
// self-loop
return [...row, 2];
} else if (i === source) {
return [...row, 1];
} else if (i === sink) {
return [...row, -1];
} else {
return [...row, 0];
}
}),
weight: [...n.weight, weight],
}, network_proto);
}
// gets the indices of the edges incident on the given adjacency list
function incident_edges(n, adj) {
const incident = adj
.map((edge, index) => (edge < 0) || (edge === 2) ? index : null)
.filter(index => index !== null);
return incident;
}
// get the indices of the ends of an edge
// in the case of self-loops, both values are the same
function edge_ends(n, edge) {
const ends = n.adjacency
.map((adj, index) => adj[edge] !== 0 ? index : null)
.filter(index => index != null);
ends.sort((a, b) => n.adjacency[a][edge] < n.adjacency[b][edge] ? -1 : 1);
if (ends.length === 1) {
return { source: ends[0], sink: ends[0] };
} else if (ends.length === 2) {
return { source: ends[1], sink: ends[0] };
} else {
throw new Error("something bad happened with the ends");
}
}
// recursively get the value of a node from the input nodes,
// optionally caching the computed values
function get_value(n, index, input, prev, cache) {
// check if value is cached
if (cache !== undefined && cache[index]) {
return cache[index];
}
// check if value is input
if (is_input(n, index)) {
return input[index];
}
const adj = n.adjacency[index]; // get adjacency list
const incident = incident_edges(n, adj); // get incident edges
const weight = incident.map(x => n.weight[x]); // edge weights
const sources = incident // get ancestor nodes
.map(x => edge_ends(n, x).source);
// get the value of each ancestor
const values = sources
.map(x => x === index // if the ancestor is this node
? prev[x - n.input_count] // then the value is the previous value
: get_value(n, x, input, prev, cache)); // else recurse
const sum = values // compute the weighted sum of the values
.reduce((acc, x, i) => acc + (weight[i] * x), 0);
// compute result
const value = Math.tanh(sum);
// !!! impure caching !!!
// cache result
if (cache !== undefined) {
cache[index] = value;
}
return value;
}
// compute a network's output and new hidden state
// given the input and previous hidden state
export function network_compute(n, input, state) {
// validate input
if (input.length !== n.input_count) {
throw new Error("incorrect number of input elements");
}
// validate state
const hidden_count = n.adjacency.length - n.input_count - n.output_count;
if (state.length !== hidden_count) {
throw new Error("incorrect number of state elements");
}
// !!! impure caching !!!
const value_cache = {};
const result = Object.freeze(n.adjacency
.map((x, i) => is_output(n, i) ? i : null) // output index or null
.filter(i => i !== null) // remove nulls
.map(x => get_value(n, x, input, state, value_cache)) // map to computed value
);
const newstate = Object.freeze(n.adjacency
.map((x, i) => is_hidden(n, i) ? i : null) // hidden index or null
.filter(i => i !== null) // remove nulls
.map(x => get_value(n, x, input, state, value_cache)) // map to computed value (using cache)
);
return Object.freeze([result, newstate]);
}
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