IT and Management

We provide end to end solutions including ERP Application Softwares (SAP, Oracle, Microsoft Dynamics, JDEdwards, Peoplesoft and Hyperion), Hardware System Infrastructure, networking infrastructure, Security solutions, Storage Management and Disaster Recovery, Access Infrastructure (Citrix Solution Advisor – Gold Partner), Printing Solutions, Enterprise Reporting, Acrobat Family and Print/Web publishing, Authoring and design, CAD Productivity.

Industry

Industry is the production of an economic good or service within an economy. Manufacturing industry became a key sector of production and labour in European and North American countries during the Industrial Revolution, upsetting previous mercantile and feudal economies. This occurred through many successive rapid advances in technology, such as the production of steel and coal.

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A government is the body within an organization that has the authority to make and enforce rules, laws and regulations, control and direct the actions or behavior of the individuals within the organization and deal with everyday administrative issues.

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Education today involves many challenges, from preparing students to join the workforce to meeting stringent legislative requirements. Administrators, instructors, and researchers turn to SAP, Oracle, PeopleSoft or Microsoft Dynamics for the products and services they need to achieve success in these and many other areas.

Property

Property management is the operation, control, and oversight of real estate as used in its most broad terms. Management indicates a need to be cared for, monitored and accountability given for its useful life and condition. Property management involves the processes, systems and manpower required to manage the life cycle of all acquired property as defined above including acquisition, control, accountability, responsibility, maintenance, utilization and disposition.

Kholid Efendi.

More than 20+ years of accumulated experience in the presales, implementation and management of Financials, Supply Chain, Manufacturing, Property Management, Enterprise Assets Management EDW/BI and Projects Management involving various ERP Software’s like SAP. Oracle, and Microsoft Dynamics. Expertise in marketing communication and digital marketing. We are competencies on IT and Management, Industry, Property, Government and Education. We also provide services including consultancy, training, implementation, customization and maintenance support.

We provide services including consultancy, training, implementation, customization and maintenance support.

Tuesday, 2 June 2026

TOLERANCE & VARIANCE ANALYSIS

TOLERANCE & VARIANCE ANALYSIS

TOLERANSI STATISTIKA
Dalam statistika, *toleransi* artinya *batas penyimpangan yang masih bisa diterima* dari nilai sebenarnya.
Dia dipakai supaya kita nggak ngot cari angka yang "sempurna 100%", karena di dunia nyata selalu ada error, pengukuran, dan variasi.
Ada 3 konteks utama:
1. TOLERANSI DALAM SAMPLING & ESTIMASI
Ini yang paling sering dipakai.
*Maksudnya:* Seberapa jauh hasil sampel boleh meleset dari nilai populasi sebenarnya.
Contoh:
Survei elektabilitas calon A = 45%. Margin error/toleransi = ±3%.
Artinya nilai sebenarnya di populasi kemungkinan ada di 42% - 48%.
Kalau toleransi diperketat jadi ±1%, butuh sampel jauh lebih besar dan biaya naik. Jadi kita pilih toleransi yang seimbang antara akurasi dan biaya.
2. TOLERANSI DALAM KONTROL KUALITAS / SIX SIGMA
Dipakai di pabrik, lab, manufaktur.
*Maksudnya:* Batas atas dan bawah ukuran produk yang masih dianggap "lolos".
Contoh:
Botol air harus 600 ml. Toleransi yang ditetapkan ±5 ml.
Jadi botol 595-605 ml masih lolos. Di bawah 595 atau di atas 605 = reject.
Ini mencegah buang produk yang sebenarnya masih layak pakai cuma karena meleset 1-2 ml.
3. TOLERANSI DALAM MODEL REGRESI- "TOLERANCE" di SPSS/STRATA
Ini istilah teknis di multikolinearitas.
*Maksudnya:* Seberapa besar satu variabel independen tidak dijelaskan oleh variabel independen lain.
Rumus: `Tolerance = 1 - R²`
- Tolerance = 1 → variabel itu mandiri, nggak ada masalah
- Tolerance < 0.1 → bahaya, ada multikolinearitas tinggi. Model jadi nggak stabil
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*Intinya:*
Toleransi = "ruang toleransi kesalahan". Tanpa toleransi, semua data di dunia nyata akan dianggap salah karena nggak mungkin 100% presisi.
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VARIANCE ANALYSIS
*Variance Analysis = Analisis Varians = ANOVA*
*Intinya: Nguji apakah rata-rata 3 grup atau lebih itu beda beneran, atau cuma beda karena kebetulan.*
ANOVA = _Analysis of Variance_. Bukan nguji varians, tapi nguji rata-rata dengan cara membandingkan varians.
*1. Kapan Dipakai ANOVA?*
Kalau kamu punya:
*1 Faktor + 3 Grup atau lebih* → Contoh:
_"Apakah nilai rata-rata siswa yang diajar Metode A, Metode B, Metode C itu beda?"_
Kalau cuma 2 grup pakai Uji-T. Kalau 3+ grup pakai ANOVA biar nggak salah alpha.
*2. Konsep Kunci: Pecah Varians*
*Total Varians = Varians Antar Grup + Varians Dalam Grup*
**Sumber Varians** **Maksud** **Kalau Besar Artinya**
**Antar Grup** *Between* Seberapa jauh rata-rata grup beda sama rata-rata total **Efek perlakuan nyata**. Metode A, B, C memang beda
**Dalam Grup** *Within/Error* Seberapa nyebar data di dalam 1 grup. Isinya error/galat **Noise/kebetulan**. Siswa dalam Metode A nilainya beda-beda sendiri
*Rumus F-Hitung:*
F = \frac{\text{Varians Antar Grup}}{\text{Varians Dalam Grup}} = \frac{MSG}{MSE}
- *MSG* = _Mean Square Between Group_ = Rata-rata kuadrat antar grup
- *MSE* = _Mean Square Error_ = Rata-rata kuadrat dalam grup
*Logika:* Kalau F besar → Varians antar grup >> varians error → Rata-rata grup beda signifikan.
*3. Jenis-Jenis ANOVA*
**Jenis** **Dipakai Saat** **Contoh**
**One-Way ANOVA** 1 Faktor, 3+ grup Pengaruh 3 jenis pupuk ke hasil panen
**Two-Way ANOVA** 2 Faktor Pengaruh pupuk + jenis tanah ke hasil panen
**Repeated Measures** Data sama diukur berkali-kali Tekanan darah sebelum, sesudah, 1 jam setelah obat
**MANOVA** 2+ variabel terikat Pengaruh metode belajar ke nilai MTK & nilai IPA
*4. Syarat/Asumsi ANOVA*
Harus terpenuhi biar hasil sahih:
1. *Normalitas* = Data tiap grup sebarannya normal. Cek pakai Shapiro-Wilk.
2. *Homogenitas Varians* = Varians tiap grup sama. Cek pakai Levene's Test.
3. *Independensi* = Data antar observasi bebas. Nggak saling pengaruh.
4. *Data interval/rasio* = Nilai, berat, tinggi. Bukan kategori.
Kalau syarat nggak terpenuhi → pakai *Kruskal-Wallis* = ANOVA versi non-parametrik.
*5. Hipotesis ANOVA*
*H0:* $\mu_1 = \mu_2 = \mu_3 = ...$ = Semua rata-rata grup sama
*H1:* Minimal ada 1 pasang rata-rata yang beda
*Keputusan:*
Jika *F-hitung > F-tabel* atau *p-value < 0.05* → Tolak H0 → Ada beda signifikan.
Tapi ANOVA nggak kasih tau _grup mana yang beda_. Harus lanjut *Uji Post-Hoc*: Tukey, Bonferroni, LSD.
*6. Contoh Cepat One-Way ANOVA*
Kasus: Toko A, B, C. Mana yang penjualan rata-rata hariannya beda?
**Toko A** **Toko B** **Toko C**
20, 22, 21 25, 24, 26 30, 31, 29
1. *Rata-rata:* A=21, B=25, C=30. Total rata-rata = 25.33
2. *Hitung SS Between:* $3(21-25.33)^2 + 3(25-25.33)^2 + 3(30-25.33)^2 = 122$
3. *Hitung SS Within:* $(20-21)^2+(22-21)^2+...$ = 8
4. *F = (122/2) / (8/6) = 61 / 1.33 = 45.75*
5. *F-tabel* df 2,6 α=0.05 = 5.14. Karena 45.75 > 5.14 → *Beda signifikan*.
Artinya: Penjualan 3 toko memang beda beneran, bukan kebetulan. Lanjut Post-Hoc buat tau A vs B beda? B vs C beda?
*7. ANOVA vs Regresi vs Uji-T*
**Uji** **Fungsi**
**Uji-T** Bandingin 2 rata-rata
**ANOVA** Bandingin 3+ rata-rata. Kalau faktornya kategori
**Regresi** Lihat pengaruh variabel numerik ke numerik
*Singkatnya 1 Kalimat:*
*ANOVA = alat buat jawab "Apakah perlakuan/grup bikin beda rata-rata?" dengan cara ngebandingin varians antar grup vs varians error.*