关于
This skill helps developers manage BibTeX bibliography files using R packages like RefManageR and bibtex. It can parse, merge, deduplicate, and generate entries from identifiers like DOIs, then export clean .bib files. Use it for creating or cleaning bibliographies in R Markdown/Quarto projects or merging collaborator files.
快速安装
Claude Code
推荐npx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/manage-bibliography在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Manage Bibliography
Create, merge, deduplicate BibTeX bibliography files using R. Full lifecycle: parse existing .bib files into structured R objects, generate new entries from identifiers (DOI, ISBN, arXiv ID), merge multiple bibliographies with intelligent deduplication, export clean, consistently formatted .bib output.
When Use
- Creating new .bib file for R Markdown or Quarto project
- Merging bibliographies from multiple collaborators or sources
- Deduplicating .bib file grown through copy-paste accumulation
- Generating BibTeX entries programmatically from DOIs or other identifiers
- Cleaning and standardizing existing .bib file (consistent keys, sorted fields)
Inputs
- Required: Path to one or more .bib files, or list of DOIs/ISBNs/arXiv IDs
- Optional: Output .bib file path (default:
references.bib) - Optional: Deduplication strategy (
doi,title,both; default:both) - Optional: Sort order (
author,year,key; default:key) - Optional: Key generation pattern (default:
AuthorYear)
Steps
Step 1: Install and Load Required Packages
required_packages <- c("RefManageR", "bibtex", "stringdist")
missing <- required_packages[!vapply(required_packages, requireNamespace,
logical(1), quietly = TRUE)]
if (length(missing) > 0) install.packages(missing)
library(RefManageR)
Got: All packages load without errors.
If fail: RefManageR fails to install? Check curl and xml2 system libraries available. On Ubuntu: sudo apt install libcurl4-openssl-dev libxml2-dev.
Step 2: Parse Existing .bib Files
bib <- RefManageR::ReadBib("references.bib", check = FALSE)
message(sprintf("Parsed %d entries from references.bib", length(bib)))
# Inspect structure
print(bib[1:3])
# Access fields programmatically
keys <- names(bib)
years <- vapply(bib, function(x) x$year %||% NA_character_, character(1))
Got: BibEntry object containing all entries from file. Entry count matches number of @article{, @book{, etc. blocks in file.
If fail: Parsing fails? Check for unmatched braces or invalid UTF-8 in .bib file. Run bibtex::read.bib() as fallback with stricter parsing.
Step 3: Generate Entries from Identifiers
# From DOI
entry_doi <- RefManageR::GetBibEntryWithDOI("10.1093/bioinformatics/btz848")
# From a vector of DOIs
dois <- c("10.1093/bioinformatics/btz848", "10.1038/s41586-020-2649-2")
entries <- do.call(c, lapply(dois, function(d) {
tryCatch(
RefManageR::GetBibEntryWithDOI(d),
error = function(e) {
warning(sprintf("Failed to fetch DOI %s: %s", d, e$message))
NULL
}
)
}))
entries <- Filter(Negate(is.null), entries)
Got: BibEntry objects with complete metadata (title, author, journal, year, DOI) for each successfully resolved identifier.
If fail: DOI resolution depends on CrossRef API. Requests fail? Check network connectivity and whether DOI is valid. Rate limiting may apply for large batches. Add Sys.sleep(1) between requests.
Step 4: Merge Multiple Bibliographies
bib1 <- RefManageR::ReadBib("project_a.bib", check = FALSE)
bib2 <- RefManageR::ReadBib("project_b.bib", check = FALSE)
# Simple merge
merged <- c(bib1, bib2)
message(sprintf("Merged: %d + %d = %d entries (before dedup)",
length(bib1), length(bib2), length(merged)))
Got: Combined BibEntry object containing entries from both files.
Step 5: Deduplicate Entries
deduplicate_bib <- function(bib, method = "both") {
n_before <- length(bib)
keys_to_remove <- c()
for (i in seq_along(bib)) {
if (names(bib)[i] %in% keys_to_remove) next
for (j in seq(i + 1, length(bib))) {
if (j > length(bib)) break
if (names(bib)[j] %in% keys_to_remove) next
is_dup <- FALSE
if (method %in% c("doi", "both")) {
doi_i <- bib[[i]]$doi %||% ""
doi_j <- bib[[j]]$doi %||% ""
if (nzchar(doi_i) && nzchar(doi_j) && tolower(doi_i) == tolower(doi_j)) {
is_dup <- TRUE
}
}
if (!is_dup && method %in% c("title", "both")) {
title_i <- tolower(gsub("[^a-z0-9 ]", "", tolower(bib[[i]]$title %||% "")))
title_j <- tolower(gsub("[^a-z0-9 ]", "", tolower(bib[[j]]$title %||% "")))
if (nzchar(title_i) && nzchar(title_j)) {
sim <- 1 - stringdist::stringdist(title_i, title_j, method = "jw")
if (sim > 0.95) is_dup <- TRUE
}
}
if (is_dup) keys_to_remove <- c(keys_to_remove, names(bib)[j])
}
}
if (length(keys_to_remove) > 0) {
bib <- bib[!names(bib) %in% keys_to_remove]
}
message(sprintf("Deduplication: %d -> %d entries (%d duplicates removed)",
n_before, length(bib), n_before - length(bib)))
bib
}
merged <- deduplicate_bib(merged, method = "both")
Got: Duplicate entries removed. Count of removed duplicates printed.
If fail: Title comparison too aggressive (removing non-duplicates)? Raise similarity threshold above 0.95 or switch to method = "doi" only.
Step 6: Sort and Export
# Sort by citation key
sorted_bib <- sort(merged, sorting = "nyt") # name-year-title
# Export to .bib file
RefManageR::WriteBib(sorted_bib, file = "references.bib", biblatex = FALSE)
message(sprintf("Wrote %d entries to references.bib", length(sorted_bib)))
Got: Clean .bib file written to disk with consistent formatting, one entry per block, sorted alphabetically by citation key.
If fail: WriteBib produces encoding issues? Ensure R session locale supports UTF-8: Sys.setlocale("LC_ALL", "en_US.UTF-8").
Checks
- Output .bib file parses without errors:
RefManageR::ReadBib("references.bib") - Entry count matches expectations (input count minus duplicates)
- No duplicate DOIs remain: all DOIs in output unique
- All entries have citation key
- Required fields present per entry type (author, title, year at minimum)
- File is valid BibTeX (test with
bibtex::read.bib())
Pitfalls
- Encoding issues: .bib files with Latin-1 accents break UTF-8 parsers. Convert encoding first:
iconv -f ISO-8859-1 -t UTF-8 old.bib > new.bib - Unmatched braces: Single missing
}silently drops entries. Validate brace balance before parsing large files - DOI rate limiting: CrossRef throttles unauthenticated requests. Set polite email with
RefManageR::BibOptions(check.entries = FALSE)and batch requests - Key collisions: Merging files with duplicate keys (e.g., both have
Smith2020) silently overwrites. Regenerate keys after merging - LaTeX in titles: Titles with
{DNA}or$\alpha$need careful handling. RefManageR preserves these but downstream tools may strip them
See Also
format-citations- format bibliography entries into styled citationsvalidate-references- verify completeness and DOI resolution of .bib entries../reporting/format-apa-report- generate APA-formatted reports using bibliographies../r-packages/write-vignette- create package vignettes citing references
GitHub 仓库
Frequently asked questions
What is the manage-bibliography skill?
manage-bibliography is a Claude Skill by pjt222. Skills package instructions and resources that Claude loads on demand, so Claude can perform manage-bibliography-related tasks without extra prompting.
How do I install manage-bibliography?
Use the install commands on this page: add manage-bibliography to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.
What category does manage-bibliography belong to?
manage-bibliography is in the Meta category, tagged general.
Is manage-bibliography free to use?
Yes. manage-bibliography is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.
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